638 lines
24 KiB
Python
Executable File
638 lines
24 KiB
Python
Executable File
import glob
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import random
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import cv2
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import matplotlib
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import matplotlib.pyplot as plt
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import numpy as np
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import torch
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import torch.nn as nn
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from PIL import Image
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from tqdm import tqdm
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from . import torch_utils
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matplotlib.rc('font', **{'size': 12})
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# Set printoptions
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torch.set_printoptions(linewidth=1320, precision=5, profile='long')
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np.set_printoptions(linewidth=320, formatter={'float_kind': '{:11.5g}'.format}) # format short g, %precision=5
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# Prevent OpenCV from multithreading (to use PyTorch DataLoader)
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cv2.setNumThreads(0)
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def float3(x): # format floats to 3 decimals
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return float(format(x, '.3f'))
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def init_seeds(seed=0):
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random.seed(seed)
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np.random.seed(seed)
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torch_utils.init_seeds(seed=seed)
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def load_classes(path):
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# Loads *.names file at 'path'
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with open(path, 'r') as f:
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names = f.read().split('\n')
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return list(filter(None, names)) # filter removes empty strings (such as last line)
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def model_info(model, report='summary'):
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# Plots a line-by-line description of a PyTorch model
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n_p = sum(x.numel() for x in model.parameters()) # number parameters
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n_g = sum(x.numel() for x in model.parameters() if x.requires_grad) # number gradients
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if report is 'full':
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print('%5s %40s %9s %12s %20s %10s %10s' % ('layer', 'name', 'gradient', 'parameters', 'shape', 'mu', 'sigma'))
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for i, (name, p) in enumerate(model.named_parameters()):
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name = name.replace('module_list.', '')
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print('%5g %40s %9s %12g %20s %10.3g %10.3g' %
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(i, name, p.requires_grad, p.numel(), list(p.shape), p.mean(), p.std()))
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print('Model Summary: %g layers, %g parameters, %g gradients' % (len(list(model.parameters())), n_p, n_g))
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def labels_to_class_weights(labels, nc=80):
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# Get class weights (inverse frequency) from training labels
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labels = np.concatenate(labels, 0) # labels.shape = (866643, 5) for COCO
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classes = labels[:, 0].astype(np.int) # labels = [class xywh]
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weights = np.bincount(classes, minlength=nc) # occurences per class
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weights[weights == 0] = 1 # replace empty bins with 1
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weights = 1 / weights # number of targets per class
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weights /= weights.sum() # normalize
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return torch.Tensor(weights)
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def labels_to_image_weights(labels, nc=80, class_weights=np.ones(80)):
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# Produces image weights based on class mAPs
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n = len(labels)
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class_counts = np.array([np.bincount(labels[i][:, 0].astype(np.int), minlength=nc) for i in range(n)])
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image_weights = (class_weights.reshape(1, nc) * class_counts).sum(1)
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# index = random.choices(range(n), weights=image_weights, k=1) # weight image sample
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return image_weights
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def coco_class_weights(): # frequency of each class in coco train2014
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n = [187437, 4955, 30920, 6033, 3838, 4332, 3160, 7051, 7677, 9167, 1316, 1372, 833, 6757, 7355, 3302, 3776, 4671,
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6769, 5706, 3908, 903, 3686, 3596, 6200, 7920, 8779, 4505, 4272, 1862, 4698, 1962, 4403, 6659, 2402, 2689,
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4012, 4175, 3411, 17048, 5637, 14553, 3923, 5539, 4289, 10084, 7018, 4314, 3099, 4638, 4939, 5543, 2038, 4004,
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5053, 4578, 27292, 4113, 5931, 2905, 11174, 2873, 4036, 3415, 1517, 4122, 1980, 4464, 1190, 2302, 156, 3933,
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1877, 17630, 4337, 4624, 1075, 3468, 135, 1380]
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weights = 1 / torch.Tensor(n)
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weights /= weights.sum()
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return weights
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def coco80_to_coco91_class(): # converts 80-index (val2014) to 91-index (paper)
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# https://tech.amikelive.com/node-718/what-object-categories-labels-are-in-coco-dataset/
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# a = np.loadtxt('data/coco.names', dtype='str', delimiter='\n')
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# b = np.loadtxt('data/coco_paper.names', dtype='str', delimiter='\n')
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# x = [list(a[i] == b).index(True) + 1 for i in range(80)] # darknet to coco
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x = [1, 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 13, 14, 15, 16, 17, 18, 19, 20, 21, 22, 23, 24, 25, 27, 28, 31, 32, 33, 34,
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35, 36, 37, 38, 39, 40, 41, 42, 43, 44, 46, 47, 48, 49, 50, 51, 52, 53, 54, 55, 56, 57, 58, 59, 60, 61, 62, 63,
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64, 65, 67, 70, 72, 73, 74, 75, 76, 77, 78, 79, 80, 81, 82, 84, 85, 86, 87, 88, 89, 90]
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return x
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def weights_init_normal(m):
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classname = m.__class__.__name__
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if classname.find('Conv') != -1:
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torch.nn.init.normal_(m.weight.data, 0.0, 0.03)
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elif classname.find('BatchNorm2d') != -1:
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torch.nn.init.normal_(m.weight.data, 1.0, 0.03)
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torch.nn.init.constant_(m.bias.data, 0.0)
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def xyxy2xywh(x):
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# Convert bounding box format from [x1, y1, x2, y2] to [x, y, w, h]
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y = torch.zeros_like(x) if isinstance(x, torch.Tensor) else np.zeros_like(x)
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y[:, 0] = (x[:, 0] + x[:, 2]) / 2
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y[:, 1] = (x[:, 1] + x[:, 3]) / 2
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y[:, 2] = x[:, 2] - x[:, 0]
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y[:, 3] = x[:, 3] - x[:, 1]
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return y
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def xywh2xyxy(x):
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# Convert bounding box format from [x, y, w, h] to [x1, y1, x2, y2]
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y = torch.zeros_like(x) if isinstance(x, torch.Tensor) else np.zeros_like(x)
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y[:, 0] = x[:, 0] - x[:, 2] / 2
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y[:, 1] = x[:, 1] - x[:, 3] / 2
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y[:, 2] = x[:, 0] + x[:, 2] / 2
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y[:, 3] = x[:, 1] + x[:, 3] / 2
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return y
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def scale_coords(img1_shape, coords, img0_shape):
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# Rescale coords1 (xyxy) from img1_shape to img0_shape
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gain = max(img1_shape) / max(img0_shape) # gain = old / new
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coords[:, [0, 2]] -= (img1_shape[1] - img0_shape[1] * gain) / 2 # x padding
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coords[:, [1, 3]] -= (img1_shape[0] - img0_shape[0] * gain) / 2 # y padding
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coords[:, :4] /= gain
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coords[:, :4] = coords[:, :4].clamp(min=0)
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return coords
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def ap_per_class(tp, conf, pred_cls, target_cls):
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""" Compute the average precision, given the recall and precision curves.
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Source: https://github.com/rafaelpadilla/Object-Detection-Metrics.
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# Arguments
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tp: True positives (list).
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conf: Objectness value from 0-1 (list).
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pred_cls: Predicted object classes (list).
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target_cls: True object classes (list).
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# Returns
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The average precision as computed in py-faster-rcnn.
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"""
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# Sort by objectness
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i = np.argsort(-conf)
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tp, conf, pred_cls = tp[i], conf[i], pred_cls[i]
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# Find unique classes
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unique_classes = np.unique(target_cls)
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# Create Precision-Recall curve and compute AP for each class
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ap, p, r = [], [], []
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for c in unique_classes:
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i = pred_cls == c
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n_gt = (target_cls == c).sum() # Number of ground truth objects
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n_p = i.sum() # Number of predicted objects
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if n_p == 0 and n_gt == 0:
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continue
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elif n_p == 0 or n_gt == 0:
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ap.append(0)
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r.append(0)
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p.append(0)
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else:
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# Accumulate FPs and TPs
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fpc = (1 - tp[i]).cumsum()
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tpc = (tp[i]).cumsum()
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# Recall
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recall_curve = tpc / (n_gt + 1e-16)
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r.append(recall_curve[-1])
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# Precision
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precision_curve = tpc / (tpc + fpc)
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p.append(precision_curve[-1])
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# AP from recall-precision curve
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ap.append(compute_ap(recall_curve, precision_curve))
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# Plot
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# plt.plot(recall_curve, precision_curve)
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# Compute F1 score (harmonic mean of precision and recall)
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p, r, ap = np.array(p), np.array(r), np.array(ap)
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f1 = 2 * p * r / (p + r + 1e-16)
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return p, r, ap, f1, unique_classes.astype('int32')
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def compute_ap(recall, precision):
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""" Compute the average precision, given the recall and precision curves.
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Source: https://github.com/rbgirshick/py-faster-rcnn.
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# Arguments
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recall: The recall curve (list).
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precision: The precision curve (list).
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# Returns
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The average precision as computed in py-faster-rcnn.
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"""
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# correct AP calculation
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# first append sentinel values at the end
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mrec = np.concatenate(([0.], recall, [1.]))
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mpre = np.concatenate(([0.], precision, [0.]))
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# compute the precision envelope
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for i in range(mpre.size - 1, 0, -1):
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mpre[i - 1] = np.maximum(mpre[i - 1], mpre[i])
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# to calculate area under PR curve, look for points
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# where X axis (recall) changes value
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i = np.where(mrec[1:] != mrec[:-1])[0]
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# and sum (\Delta recall) * prec
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ap = np.sum((mrec[i + 1] - mrec[i]) * mpre[i + 1])
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return ap
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def bbox_iou(box1, box2, x1y1x2y2=True):
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# Returns the IoU of box1 to box2. box1 is 4, box2 is nx4
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box2 = box2.t()
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# Get the coordinates of bounding boxes
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if x1y1x2y2:
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# x1, y1, x2, y2 = box1
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b1_x1, b1_y1, b1_x2, b1_y2 = box1[0], box1[1], box1[2], box1[3]
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b2_x1, b2_y1, b2_x2, b2_y2 = box2[0], box2[1], box2[2], box2[3]
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else:
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# x, y, w, h = box1
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b1_x1, b1_x2 = box1[0] - box1[2] / 2, box1[0] + box1[2] / 2
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b1_y1, b1_y2 = box1[1] - box1[3] / 2, box1[1] + box1[3] / 2
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b2_x1, b2_x2 = box2[0] - box2[2] / 2, box2[0] + box2[2] / 2
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b2_y1, b2_y2 = box2[1] - box2[3] / 2, box2[1] + box2[3] / 2
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# Intersection area
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inter_area = (torch.min(b1_x2, b2_x2) - torch.max(b1_x1, b2_x1)).clamp(0) * \
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(torch.min(b1_y2, b2_y2) - torch.max(b1_y1, b2_y1)).clamp(0)
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# Union Area
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union_area = ((b1_x2 - b1_x1) * (b1_y2 - b1_y1) + 1e-16) + \
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(b2_x2 - b2_x1) * (b2_y2 - b2_y1) - inter_area
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return inter_area / union_area # iou
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def wh_iou(box1, box2):
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# Returns the IoU of wh1 to wh2. wh1 is 2, wh2 is nx2
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box2 = box2.t()
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# w, h = box1
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w1, h1 = box1[0], box1[1]
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w2, h2 = box2[0], box2[1]
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# Intersection area
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inter_area = torch.min(w1, w2) * torch.min(h1, h2)
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# Union Area
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union_area = (w1 * h1 + 1e-16) + w2 * h2 - inter_area
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return inter_area / union_area # iou
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def compute_loss(p, targets, model): # predictions, targets, model
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ft = torch.cuda.FloatTensor if p[0].is_cuda else torch.Tensor
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lxy, lwh, lcls, lconf = ft([0]), ft([0]), ft([0]), ft([0])
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txy, twh, tcls, indices = build_targets(model, targets)
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# Define criteria
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MSE = nn.MSELoss()
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CE = nn.CrossEntropyLoss() # (weight=model.class_weights)
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BCE = nn.BCEWithLogitsLoss()
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# Compute losses
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h = model.hyp # hyperparameters
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bs = p[0].shape[0] # batch size
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k = bs # loss gain
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for i, pi0 in enumerate(p): # layer i predictions, i
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b, a, gj, gi = indices[i] # image, anchor, gridy, gridx
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tconf = torch.zeros_like(pi0[..., 0]) # conf
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# Compute losses
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if len(b): # number of targets
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pi = pi0[b, a, gj, gi] # predictions closest to anchors
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tconf[b, a, gj, gi] = 1 # conf
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# pi[..., 2:4] = torch.sigmoid(pi[..., 2:4]) # wh power loss (uncomment)
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lxy += (k * h['xy']) * MSE(torch.sigmoid(pi[..., 0:2]), txy[i]) # xy loss
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lwh += (k * h['wh']) * MSE(pi[..., 2:4], twh[i]) # wh yolo loss
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lcls += (k * h['cls']) * CE(pi[..., 5:], tcls[i]) # class_conf loss
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# pos_weight = ft([gp[i] / min(gp) * 4.])
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# BCE = nn.BCEWithLogitsLoss(pos_weight=pos_weight)
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lconf += (k * h['conf']) * BCE(pi0[..., 4], tconf) # obj_conf loss
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loss = lxy + lwh + lconf + lcls
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return loss, torch.cat((lxy, lwh, lconf, lcls, loss)).detach()
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def build_targets(model, targets):
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# targets = [image, class, x, y, w, h]
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iou_thres = model.hyp['iou_t'] # hyperparameter
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if type(model) in (nn.parallel.DataParallel, nn.parallel.DistributedDataParallel):
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model = model.module
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nt = len(targets)
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txy, twh, tcls, indices = [], [], [], []
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for i in model.yolo_layers:
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layer = model.module_list[i][0]
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# iou of targets-anchors
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t, a = targets, []
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gwh = targets[:, 4:6] * layer.ng
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if nt:
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iou = [wh_iou(x, gwh) for x in layer.anchor_vec]
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iou, a = torch.stack(iou, 0).max(0) # best iou and anchor
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# reject below threshold ious (OPTIONAL, increases P, lowers R)
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reject = True
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if reject:
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j = iou > iou_thres
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t, a, gwh = targets[j], a[j], gwh[j]
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# Indices
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b, c = t[:, :2].long().t() # target image, class
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gxy = t[:, 2:4] * layer.ng # grid x, y
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gi, gj = gxy.long().t() # grid x, y indices
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indices.append((b, a, gj, gi))
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# XY coordinates
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txy.append(gxy - gxy.floor())
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# Width and height
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twh.append(torch.log(gwh / layer.anchor_vec[a])) # wh yolo method
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# twh.append((gwh / layer.anchor_vec[a]) ** (1 / 3) / 2) # wh power method
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# Class
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tcls.append(c)
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if c.shape[0]:
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assert c.max() <= layer.nc, 'Target classes exceed model classes'
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return txy, twh, tcls, indices
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def non_max_suppression(prediction, conf_thres=0.5, nms_thres=0.5):
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"""
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Removes detections with lower object confidence score than 'conf_thres'
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Non-Maximum Suppression to further filter detections.
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Returns detections with shape:
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(x1, y1, x2, y2, object_conf, class_conf, class)
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"""
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min_wh = 2 # (pixels) minimum box width and height
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output = [None] * len(prediction)
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for image_i, pred in enumerate(prediction):
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# Experiment: Prior class size rejection
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# x, y, w, h = pred[:, 0], pred[:, 1], pred[:, 2], pred[:, 3]
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# a = w * h # area
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# ar = w / (h + 1e-16) # aspect ratio
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# n = len(w)
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# log_w, log_h, log_a, log_ar = torch.log(w), torch.log(h), torch.log(a), torch.log(ar)
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# shape_likelihood = np.zeros((n, 60), dtype=np.float32)
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# x = np.concatenate((log_w.reshape(-1, 1), log_h.reshape(-1, 1)), 1)
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# from scipy.stats import multivariate_normal
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# for c in range(60):
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# shape_likelihood[:, c] =
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# multivariate_normal.pdf(x, mean=mat['class_mu'][c, :2], cov=mat['class_cov'][c, :2, :2])
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# Multiply conf by class conf to get combined confidence
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class_conf, class_pred = pred[:, 5:].max(1)
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pred[:, 4] *= class_conf
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# Select only suitable predictions
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i = (pred[:, 4] > conf_thres) & (pred[:, 2:4] > min_wh).all(1) & torch.isfinite(pred).all(1)
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pred = pred[i]
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# If none are remaining => process next image
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if len(pred) == 0:
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continue
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# Select predicted classes
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class_conf = class_conf[i]
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class_pred = class_pred[i].unsqueeze(1).float()
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# Box (center x, center y, width, height) to (x1, y1, x2, y2)
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pred[:, :4] = xywh2xyxy(pred[:, :4])
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# pred[:, 4] *= class_conf # improves mAP from 0.549 to 0.551
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# Detections ordered as (x1y1x2y2, obj_conf, class_conf, class_pred)
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pred = torch.cat((pred[:, :5], class_conf.unsqueeze(1), class_pred), 1)
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# Get detections sorted by decreasing confidence scores
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pred = pred[(-pred[:, 4]).argsort()]
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det_max = []
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nms_style = 'MERGE' # 'OR' (default), 'AND', 'MERGE' (experimental)
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for c in pred[:, -1].unique():
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dc = pred[pred[:, -1] == c] # select class c
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n = len(dc)
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if n == 1:
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det_max.append(dc) # No NMS required if only 1 prediction
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continue
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elif n > 100:
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dc = dc[:100] # limit to first 100 boxes: https://github.com/ultralytics/yolov3/issues/117
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|
|
|
# Non-maximum suppression
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|
if nms_style == 'OR': # default
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|
# METHOD1
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|
# ind = list(range(len(dc)))
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|
# while len(ind):
|
|
# j = ind[0]
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|
# det_max.append(dc[j:j + 1]) # save highest conf detection
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|
# reject = (bbox_iou(dc[j], dc[ind]) > nms_thres).nonzero()
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|
# [ind.pop(i) for i in reversed(reject)]
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|
|
|
# METHOD2
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|
while dc.shape[0]:
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|
det_max.append(dc[:1]) # save highest conf detection
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|
if len(dc) == 1: # Stop if we're at the last detection
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|
break
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|
iou = bbox_iou(dc[0], dc[1:]) # iou with other boxes
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|
dc = dc[1:][iou < nms_thres] # remove ious > threshold
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|
|
|
elif nms_style == 'AND': # requires overlap, single boxes erased
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|
while len(dc) > 1:
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|
iou = bbox_iou(dc[0], dc[1:]) # iou with other boxes
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|
if iou.max() > 0.5:
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|
det_max.append(dc[:1])
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|
dc = dc[1:][iou < nms_thres] # remove ious > threshold
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|
|
|
elif nms_style == 'MERGE': # weighted mixture box
|
|
while len(dc):
|
|
if len(dc) == 1:
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|
det_max.append(dc)
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|
break
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|
i = bbox_iou(dc[0], dc) > nms_thres # iou with other boxes
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|
weights = dc[i, 4:5]
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|
dc[0, :4] = (weights * dc[i, :4]).sum(0) / weights.sum()
|
|
det_max.append(dc[:1])
|
|
dc = dc[i == 0]
|
|
|
|
elif nms_style == 'SOFT': # soft-NMS https://arxiv.org/abs/1704.04503
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|
sigma = 0.5 # soft-nms sigma parameter
|
|
while len(dc):
|
|
if len(dc) == 1:
|
|
det_max.append(dc)
|
|
break
|
|
det_max.append(dc[:1])
|
|
iou = bbox_iou(dc[0], dc[1:]) # iou with other boxes
|
|
dc = dc[1:]
|
|
dc[:, 4] *= torch.exp(-iou ** 2 / sigma) # decay confidences
|
|
|
|
if len(det_max):
|
|
det_max = torch.cat(det_max) # concatenate
|
|
output[image_i] = det_max[(-det_max[:, 4]).argsort()] # sort
|
|
|
|
return output
|
|
|
|
|
|
def get_yolo_layers(model):
|
|
bool_vec = [x['type'] == 'yolo' for x in model.module_defs]
|
|
return [i for i, x in enumerate(bool_vec) if x] # [82, 94, 106] for yolov3
|
|
|
|
|
|
def strip_optimizer_from_checkpoint(filename='weights/best.pt'):
|
|
# Strip optimizer from *.pt files for lighter files (reduced by 2/3 size)
|
|
a = torch.load(filename, map_location='cpu')
|
|
a['optimizer'] = []
|
|
torch.save(a, filename.replace('.pt', '_lite.pt'))
|
|
|
|
|
|
def coco_class_count(path='../coco/labels/train2014/'):
|
|
# Histogram of occurrences per class
|
|
nc = 80 # number classes
|
|
x = np.zeros(nc, dtype='int32')
|
|
files = sorted(glob.glob('%s/*.*' % path))
|
|
for i, file in enumerate(files):
|
|
labels = np.loadtxt(file, dtype=np.float32).reshape(-1, 5)
|
|
x += np.bincount(labels[:, 0].astype('int32'), minlength=nc)
|
|
print(i, len(files))
|
|
|
|
|
|
def coco_only_people(path='../coco/labels/val2014/'):
|
|
# Find images with only people
|
|
files = sorted(glob.glob('%s/*.*' % path))
|
|
for i, file in enumerate(files):
|
|
labels = np.loadtxt(file, dtype=np.float32).reshape(-1, 5)
|
|
if all(labels[:, 0] == 0):
|
|
print(labels.shape[0], file)
|
|
|
|
|
|
def select_best_evolve(path='../../Downloads/evolve*.txt'): # from utils.utils import *; select_best_evolve()
|
|
# Find best evolved mutation
|
|
for file in sorted(glob.glob(path)):
|
|
x = np.loadtxt(file, dtype=np.float32)
|
|
print(file, x[x[:, 2].argmax()])
|
|
|
|
|
|
def kmeans_targets(path='./data/coco_64img.txt'): # from utils.utils import *; kmeans_targets()
|
|
with open(path, 'r') as f:
|
|
img_files = f.read().splitlines()
|
|
img_files = list(filter(lambda x: len(x) > 0, img_files))
|
|
|
|
# Read shapes
|
|
n = len(img_files)
|
|
assert n > 0, 'No images found in %s' % path
|
|
label_files = [x.replace('images', 'labels').
|
|
replace('.jpeg', '.txt').
|
|
replace('.jpg', '.txt').
|
|
replace('.bmp', '.txt').
|
|
replace('.png', '.txt') for x in img_files]
|
|
s = np.array([Image.open(f).size for f in tqdm(img_files, desc='Reading image shapes')]) # (width, height)
|
|
|
|
# Read targets
|
|
labels = [np.zeros((0, 5))] * n
|
|
iter = tqdm(label_files, desc='Reading labels')
|
|
for i, file in enumerate(iter):
|
|
try:
|
|
with open(file, 'r') as f:
|
|
l = np.array([x.split() for x in f.read().splitlines()], dtype=np.float32)
|
|
if l.shape[0]:
|
|
assert l.shape[1] == 5, '> 5 label columns: %s' % file
|
|
assert (l >= 0).all(), 'negative labels: %s' % file
|
|
assert (l[:, 1:] <= 1).all(), 'non-normalized or out of bounds coordinate labels: %s' % file
|
|
l[:, [1, 3]] *= s[i][0]
|
|
l[:, [2, 4]] *= s[i][1]
|
|
l[:, 1:] *= 320 / max(s[i])
|
|
labels[i] = l
|
|
except:
|
|
pass # print('Warning: missing labels for %s' % self.img_files[i]) # missing label file
|
|
assert len(np.concatenate(labels, 0)) > 0, 'No labels found. Incorrect label paths provided.'
|
|
|
|
# kmeans
|
|
from scipy import cluster
|
|
wh = np.concatenate(labels, 0)[:, 3:5]
|
|
k = cluster.vq.kmeans(wh, 9)[0]
|
|
k = k[np.argsort(k.prod(1))]
|
|
for x in k.ravel():
|
|
print('%.1f, ' % x, end='')
|
|
|
|
|
|
# Plotting functions ---------------------------------------------------------------------------------------------------
|
|
def plot_one_box(x, img, color=None, label=None, line_thickness=None):
|
|
# Plots one bounding box on image img
|
|
tl = line_thickness or round(0.002 * max(img.shape[0:2])) + 1 # line thickness
|
|
color = color or [random.randint(0, 255) for _ in range(3)]
|
|
c1, c2 = (int(x[0]), int(x[1])), (int(x[2]), int(x[3]))
|
|
cv2.rectangle(img, c1, c2, color, thickness=tl)
|
|
if label:
|
|
tf = max(tl - 1, 1) # font thickness
|
|
t_size = cv2.getTextSize(label, 0, fontScale=tl / 3, thickness=tf)[0]
|
|
c2 = c1[0] + t_size[0], c1[1] - t_size[1] - 3
|
|
cv2.rectangle(img, c1, c2, color, -1) # filled
|
|
cv2.putText(img, label, (c1[0], c1[1] - 2), 0, tl / 3, [225, 255, 255], thickness=tf, lineType=cv2.LINE_AA)
|
|
|
|
|
|
def plot_wh_methods(): # from utils.utils import *; plot_wh_methods()
|
|
# Compares the two methods for width-height anchor multiplication
|
|
# https://github.com/ultralytics/yolov3/issues/168
|
|
x = np.arange(-4.0, 4.0, .1)
|
|
ya = np.exp(x)
|
|
yb = torch.sigmoid(torch.from_numpy(x)).numpy() * 2
|
|
|
|
fig = plt.figure(figsize=(6, 3), dpi=150)
|
|
plt.plot(x, ya, '.-', label='yolo method')
|
|
plt.plot(x, yb ** 2, '.-', label='^2 power method')
|
|
plt.plot(x, yb ** 2.5, '.-', label='^2.5 power method')
|
|
plt.xlim(left=-4, right=4)
|
|
plt.ylim(bottom=0, top=6)
|
|
plt.xlabel('input')
|
|
plt.ylabel('output')
|
|
plt.legend()
|
|
fig.tight_layout()
|
|
fig.savefig('comparison.png', dpi=300)
|
|
|
|
|
|
def plot_images(imgs, targets, fname='images.jpg'):
|
|
# Plots training images overlaid with targets
|
|
imgs = imgs.cpu().numpy()
|
|
targets = targets.cpu().numpy()
|
|
|
|
fig = plt.figure(figsize=(10, 10))
|
|
bs, _, h, w = imgs.shape # batch size, _, height, width
|
|
ns = np.ceil(bs ** 0.5) # number of subplots
|
|
|
|
for i in range(bs):
|
|
boxes = xywh2xyxy(targets[targets[:, 0] == i, 2:6]).T
|
|
boxes[[0, 2]] *= w
|
|
boxes[[1, 3]] *= h
|
|
plt.subplot(ns, ns, i + 1).imshow(imgs[i].transpose(1, 2, 0))
|
|
plt.plot(boxes[[0, 2, 2, 0, 0]], boxes[[1, 1, 3, 3, 1]], '.-')
|
|
plt.axis('off')
|
|
fig.tight_layout()
|
|
fig.savefig(fname, dpi=300)
|
|
plt.close()
|
|
|
|
|
|
def plot_test_txt(): # from test import *; plot_test()
|
|
# Plot test.txt histograms
|
|
x = np.loadtxt('test.txt', dtype=np.float32)
|
|
box = xyxy2xywh(x[:, :4])
|
|
cx, cy = box[:, 0], box[:, 1]
|
|
|
|
fig, ax = plt.subplots(1, 1, figsize=(6, 6))
|
|
ax.hist2d(cx, cy, bins=600, cmax=10, cmin=0)
|
|
ax.set_aspect('equal')
|
|
fig.tight_layout()
|
|
plt.savefig('hist2d.jpg', dpi=300)
|
|
|
|
fig, ax = plt.subplots(1, 2, figsize=(12, 6))
|
|
ax[0].hist(cx, bins=600)
|
|
ax[1].hist(cy, bins=600)
|
|
fig.tight_layout()
|
|
plt.savefig('hist1d.jpg', dpi=300)
|
|
|
|
|
|
def plot_results(start=0, stop=0): # from utils.utils import *; plot_results()
|
|
# Plot training results files 'results*.txt'
|
|
# import os; os.system('wget https://storage.googleapis.com/ultralytics/yolov3/results_v3.txt')
|
|
|
|
fig, ax = plt.subplots(2, 5, figsize=(14, 7))
|
|
ax = ax.ravel()
|
|
s = ['X + Y', 'Width + Height', 'Confidence', 'Classification', 'Train Loss', 'Precision', 'Recall', 'mAP', 'F1',
|
|
'Test Loss']
|
|
for f in sorted(glob.glob('results*.txt') + glob.glob('../../Downloads/results*.txt')):
|
|
results = np.loadtxt(f, usecols=[2, 3, 4, 5, 6, 9, 10, 11, 12, 13]).T
|
|
n = results.shape[1] # number of rows
|
|
x = range(start, min(stop, n) if stop else n)
|
|
for i in range(10):
|
|
ax[i].plot(x, results[i, x], marker='.', label=f.replace('.txt', ''))
|
|
ax[i].set_title(s[i])
|
|
fig.tight_layout()
|
|
ax[4].legend()
|
|
fig.savefig('results.png', dpi=300)
|