#!/usr/bin/env bash # New VM rm -rf sample_data yolov3 darknet apex coco cocoapi knife knifec git clone https://github.com/ultralytics/yolov3 # git clone https://github.com/AlexeyAB/darknet && cd darknet && make GPU=1 CUDNN=1 CUDNN_HALF=1 OPENCV=0 && wget -c https://pjreddie.com/media/files/darknet53.conv.74 && cd .. git clone https://github.com/NVIDIA/apex && cd apex && pip install -v --no-cache-dir --global-option="--cpp_ext" --global-option="--cuda_ext" . --user && cd .. && rm -rf apex sudo conda install -y -c conda-forge scikit-image pycocotools # tensorboard python3 -c " from yolov3.utils.google_utils import gdrive_download gdrive_download('1HaXkef9z6y5l4vUnCYgdmEAj61c6bfWO','coco.zip')" sudo shutdown # Re-clone rm -rf yolov3 # Warning: remove existing git clone https://github.com/ultralytics/yolov3 && cd yolov3 # master # git clone -b test --depth 1 https://github.com/ultralytics/yolov3 test # branch python3 train.py --img-size 320 --weights weights/darknet53.conv.74 --epochs 27 --batch-size 64 --accumulate 1 # Train python3 train.py # Resume python3 train.py --resume # Detect python3 detect.py # Test python3 test.py --save-json # Evolve for i in {0..500} do python3 train.py --data data/coco.data --img-size 512 --epochs 27 --batch-size 32 --accumulate 2 --evolve --weights '' --bucket yolov4 done # Git pull git pull https://github.com/ultralytics/yolov3 # master git pull https://github.com/ultralytics/yolov3 test # branch # Test Darknet training python3 test.py --weights ../darknet/backup/yolov3.backup # Copy last.pt TO bucket gsutil cp yolov3/weights/last1gpu.pt gs://ultralytics # Copy last.pt FROM bucket gsutil cp gs://ultralytics/last.pt yolov3/weights/last.pt wget https://storage.googleapis.com/ultralytics/yolov3/last_v1_0.pt -O weights/last_v1_0.pt wget https://storage.googleapis.com/ultralytics/yolov3/best_v1_0.pt -O weights/best_v1_0.pt # Reproduce tutorials rm results*.txt # WARNING: removes existing results python3 train.py --nosave --data data/coco_1img.data && mv results.txt results0r_1img.txt python3 train.py --nosave --data data/coco_10img.data && mv results.txt results0r_10img.txt python3 train.py --nosave --data data/coco_100img.data && mv results.txt results0r_100img.txt # python3 train.py --nosave --data data/coco_100img.data --transfer && mv results.txt results3_100imgTL.txt python3 -c "from utils import utils; utils.plot_results()" # gsutil cp results*.txt gs://ultralytics gsutil cp results.png gs://ultralytics sudo shutdown # Reproduce mAP python3 test.py --save-json --img-size 608 python3 test.py --save-json --img-size 416 python3 test.py --save-json --img-size 320 sudo shutdown # Benchmark script git clone https://github.com/ultralytics/yolov3 # clone our repo git clone https://github.com/NVIDIA/apex && cd apex && pip install -v --no-cache-dir --global-option="--cpp_ext" --global-option="--cuda_ext" . --user && cd .. && rm -rf apex # install nvidia apex python3 -c "from yolov3.utils.google_utils import gdrive_download; gdrive_download('1HaXkef9z6y5l4vUnCYgdmEAj61c6bfWO','coco.zip')" # download coco dataset (20GB) cd yolov3 && clear && python3 train.py --epochs 1 # run benchmark (~30 min) # Unit tests python3 detect.py # detect 2 persons, 1 tie python3 test.py --data data/coco_32img.data # test mAP = 0.8 python3 train.py --data data/coco_32img.data --epochs 5 --nosave # train 5 epochs python3 train.py --data data/coco_1cls.data --epochs 5 --nosave # train 5 epochs python3 train.py --data data/coco_1img.data --epochs 5 --nosave # train 5 epochs # AlexyAB Darknet gsutil cp -r gs://sm6/supermarket2 . # dataset from bucket rm -rf darknet && git clone https://github.com/AlexeyAB/darknet && cd darknet && wget -c https://pjreddie.com/media/files/darknet53.conv.74 # sudo apt install libopencv-dev && make ./darknet detector calc_anchors data/coco_img64.data -num_of_clusters 9 -width 320 -height 320 # kmeans anchor calculation ./darknet detector train ../supermarket2/supermarket2.data ../yolo_v3_spp_pan_scale.cfg darknet53.conv.74 -map -dont_show # train spp ./darknet detector train ../yolov3/data/coco.data ../yolov3-spp.cfg darknet53.conv.74 -map -dont_show # train spp coco ./darknet detector train data/coco.data ../yolov3-spp.cfg darknet53.conv.74 -map -dont_show # train spp gsutil cp -r backup/*5000.weights gs://sm6/weights sudo shutdown ./darknet detector train ../supermarket2/supermarket2.data ../yolov3-tiny-sm2-1cls.cfg yolov3-tiny.conv.15 -map -dont_show # train tiny ./darknet detector train ../supermarket2/supermarket2.data cfg/yolov3-spp-sm2-1cls.cfg backup/yolov3-spp-sm2-1cls_last.weights # resume python3 train.py --data ../supermarket2/supermarket2.data --cfg ../yolov3-spp-sm2-1cls.cfg --epochs 100 --num-workers 8 --img-size 320 --nosave # train ultralytics python3 test.py --data ../supermarket2/supermarket2.data --weights ../darknet/backup/yolov3-spp-sm2-1cls_5000.weights --cfg cfg/yolov3-spp-sm2-1cls.cfg # test gsutil cp -r backup/*.weights gs://sm6/weights # weights to bucket python3 test.py --data ../supermarket2/supermarket2.data --weights weights/yolov3-spp-sm2-1cls_5000.weights --cfg ../yolov3-spp-sm2-1cls.cfg --img-size 320 --conf-thres 0.2 # test python3 test.py --data ../supermarket2/supermarket2.data --weights weights/yolov3-spp-sm2-1cls-scalexy_125_5000.weights --cfg ../yolov3-spp-sm2-1cls-scalexy_125.cfg --img-size 320 --conf-thres 0.2 # test python3 test.py --data ../supermarket2/supermarket2.data --weights weights/yolov3-spp-sm2-1cls-scalexy_150_5000.weights --cfg ../yolov3-spp-sm2-1cls-scalexy_150.cfg --img-size 320 --conf-thres 0.2 # test python3 test.py --data ../supermarket2/supermarket2.data --weights weights/yolov3-spp-sm2-1cls-scalexy_200_5000.weights --cfg ../yolov3-spp-sm2-1cls-scalexy_200.cfg --img-size 320 --conf-thres 0.2 # test python3 test.py --data ../supermarket2/supermarket2.data --weights ../darknet/backup/yolov3-spp-sm2-1cls-scalexy_variable_5000.weights --cfg ../yolov3-spp-sm2-1cls-scalexy_variable.cfg --img-size 320 --conf-thres 0.2 # test python3 train.py --img-size 320 --epochs 27 --batch-size 64 --accumulate 1 --nosave --notest && python3 test.py --weights weights/last.pt --img-size 320 --save-json && sudo shutdown # Debug/Development python3 train.py --data data/coco.data --img-size 320 --single-scale --batch-size 64 --accumulate 1 --epochs 1 --evolve --giou python3 test.py --weights weights/last.pt --cfg cfg/yolov3-spp.cfg --img-size 320 gsutil cp evolve.txt gs://ultralytics sudo shutdown #Docker sudo docker kill $(sudo docker ps -q) sudo docker pull ultralytics/yolov3:v0 sudo nvidia-docker run -it --ipc=host --mount type=bind,source="$(pwd)"/coco,target=/usr/src/coco ultralytics/yolov3:v1 clear while true do python3 train.py --weights '' --prebias --img-size 512 --batch-size 32 --accumulate 2 --evolve --epochs 27 --bucket yolov4/512_coco_27e --device 0 done python3 train.py --weights '' --prebias --img-size 512 --batch-size 16 --accumulate 4 --epochs 27 --device 0 while true; do python3 train.py --data data/coco.data --img-size 320 --batch-size 64 --accumulate 1 --evolve --epochs 1 --adam --bucket yolov4/adamdefaultpw_coco_1e; done rm -rf yolov3 # Warning: remove existing git clone https://github.com/ultralytics/yolov3 && cd yolov3 # master python3 train.py --img-size 320 --data ../data/sm3/out.data --weights weights/yolov3-spp.weights --cfg cfg/yolov3-spp.cfg --prebias --epochs 300 --batch-size 32 --accumulate 2 --multi --name sm3b_yolov3_spp python3 train.py --img-size 320 --data ../data/sm3/out.data --weights weights/yolov3-tiny.weights --cfg cfg/yolov3-tiny.cfg --prebias --epochs 300 --batch-size 32 --accumulate 2 --multi --name sm3b_yolov3_tiny sudo shutdown rm -rf yolov3 # Warning: remove existing git clone https://github.com/ultralytics/yolov3 && cd yolov3 # master python3 train.py --data data/coco_64img.data --batch-size 16 --accumulate 1 --nosave --weights weights/yolov3-spp.weights --transfer --name yolov3-spp_transfer python3 train.py --data data/coco_64img.data --batch-size 16 --accumulate 1 --nosave --name from_scratch python3 train.py --data data/coco_64img.data --batch-size 16 --accumulate 1 --nosave --weights weights/darknet53.conv.74 --name darknet53_backbone python3 train.py --data data/coco_64img.data --batch-size 16 --accumulate 1 --nosave --weights weights/yolov3-spp.weights --name yolov3-spp_backbone sudo shutdown rm -rf yolov3 # Warning: remove existing git clone https://github.com/ultralytics/yolov3 && cd yolov3 # clone # bash yolov3/data/get_coco_dataset_gdrive.sh # copy COCO2014 dataset (20GB) python3 train.py --data data/coco_1cls.data --batch-size 5 --accumulate 1 --weights weights/darknet53.conv.74 --nosave --cfg cfg/yolov3-spp.cfg --name 1cls python3 train.py --data data/coco_1cls.data --batch-size 5 --accumulate 1 --weights weights/darknet53.conv.74 --nosave --cfg cfg/yolov3-spp-1cls.cfg --name 1cls_1clscfg python3 -c "from utils import utils; utils.plot_results()" # plot as 'results.png' clear python3 test.py --img-size 320 --save-json --weights weights/last.pt python3 test.py --img-size 416 --save-json --weights weights/last.pt python3 test.py --img-size 608 --save-json --weights weights/last.pt python3 test.py --img-size 640 --save-json --weights weights/last.pt --batch-size 8 python3 test.py --img-size 800 --save-json --weights weights/last.pt --batch-size 8 sudo shutdown clear rm -rf yolov3 # Warning: remove existing git clone https://github.com/ultralytics/yolov3 && cd yolov3 # clone python3 train.py --weights '' --img-size 512 --batch-size 32 --accumulate 2 --epochs 27 --prebias --nosave --notest --name 512default sudo shutdown