89daa407e5
Default is false: python train.py If want the report: python train.py --report |
||
---|---|---|
cfg | ||
data | ||
utils | ||
weights | ||
.gitignore | ||
LICENSE | ||
README.md | ||
detect.py | ||
models.py | ||
requirements.txt | ||
test.py | ||
train.py |
README.md
Introduction
This directory contains software developed by Ultralytics LLC, and is freely available for redistribution under the GPL-3.0 license. For more information on Ultralytics projects please visit: http://www.ultralytics.com.
Description
The https://github.com/ultralytics/yolov3 repo contains inference and training code for YOLOv3 in PyTorch. Training is done on the COCO dataset by default: https://cocodataset.org/#home. Credit to Joseph Redmon for YOLO (https://pjreddie.com/darknet/yolo/) and to Erik Lindernoren for the PyTorch implementation this work is based on (https://github.com/eriklindernoren/PyTorch-YOLOv3).
Requirements
Python 3.7 or later with the following pip3 install -U -r requirements.txt
packages:
numpy
torch
opencv-python
Training
Start Training: Run train.py
to begin training after downloading COCO data with data/get_coco_dataset.sh
and specifying COCO path on line 37 (local) or line 39 (cloud). Training runs about 1 hour per COCO epoch on a 1080 Ti.
Resume Training: Run train.py --resume
to resume training from the most recently saved checkpoint latest.pt
.
Each epoch trains on 120,000 images from the train and validate COCO sets, and tests on 5000 images from the COCO validate set. An Nvidia GTX 1080 Ti will process about 10-15 epochs/day depending on image size and augmentation (13 epochs/day at 416 pixels with default augmentation). Loss plots for the bounding boxes, objectness and class confidence should appear similar to results shown here (results in progress to 160 epochs, will update).
Image Augmentation
datasets.py
applies random OpenCV-powered (https://opencv.org/) augmentation to the input images in accordance with the following specifications. Augmentation is applied only during training, not during inference. Bounding boxes are automatically tracked and updated with the images. 416 x 416 examples pictured below.
Augmentation | Description |
---|---|
Translation | +/- 20% (vertical and horizontal) |
Rotation | +/- 5 degrees |
Shear | +/- 3 degrees (vertical and horizontal) |
Scale | +/- 20% |
Reflection | 50% probability (horizontal-only) |
HSV Saturation | +/- 50% |
HSV Intensity | +/- 50% |
Inference
Checkpoints are saved in /checkpoints
directory. Run detect.py
to apply trained weights to an image, such as zidane.jpg
from the data/samples
folder, shown here. Alternatively you can use the official YOLOv3 weights:
- PyTorch format: https://storage.googleapis.com/ultralytics/yolov3.pt
- Darknet format: https://pjreddie.com/media/files/yolov3.weights
Testing
Run test.py
to validate the official YOLOv3 weights checkpoints/yolov3.weights
against the 5000 validation images. You should obtain a mAP of .581 using this repo (https://github.com/ultralytics/yolov3), compared to .579 as reported in darknet (https://arxiv.org/abs/1804.02767).
Run test.py --weights checkpoints/latest.pt
to validate against the latest training checkpoint.
Contact
For questions or comments please contact Glenn Jocher at glenn.jocher@ultralytics.com or visit us at http://www.ultralytics.com/contact