We release the code on AI City 2021 Challenge (https://www.aicitychallenge.org/) Track 3, AiForward - Team15. We get IDF1 score 0.5654.
please note your cuda version and reference get-started while install pytorch.
conda create --name st-mtmc python==3.7
pip3 install torch torchvision torchaudio
git clone https://github.com/facebookresearch/detectron2
cd detectron2
python setup.py build develop
pip install -e .
cd ..
git clone https://github.com/zxcver/spatio-time-mtmc.git
cd spatio-time-mtmc
pip install -r docs/requirement.txt
If you want to reproduce our results on AI City Challenge , please download the data set from: (https://www.aicitychallenge.org/2021-data-and-evaluation/) and put it under the folder datasets. Make sure the data structure is like:
spatio-time-mtmc
- datasets
- AIC21_Track3_MTMC_Tracking
- cam_framenum
- cam_timestamp
- eval
- train
- cam_loc
- test
- validation
- AIC21_Track3_MTMC_Tracking
and transfer video to images in validation,test and train folders:
python transfer/video2images.py
we designed a separate pipeline to control each stage more intuitively, complate inference pipeline include detection,nms,expand,mot,filter and mtmc.
you can inference with ours pretrained model in best model:
cd spatio-time-mtmc
mkdir weights
cd weights
mkdir embedding
Then put the pretrained model under this folder and run:
sh script/allin/complete_inference.sh
besides, you also can inference some stage separately.
finally, you can get results in spatio-time-mtmc/resultpipeline/mtmc/S06
- selfzero visual result with mtmc
- selfzero.txt result doc for submission
If you want to train the model by yourself, please first generate training sets through:
python transfer/prepare_dataset.py
and
python3 tools/train_net.py \
--config-file ./configs/AICity/bagtricks_R101-ibn.yml --num-gpus 8 \
TEST.IMS_PER_BATCH 256 SOLVER.MAX_EPOCH 120 SOLVER.IMS_PER_BATCH 256 \
INPUT.SIZE_TRAIN [256,256] INPUT.SIZE_TEST [256,256]