English | [简体中文](pphuman_mtmct.md) # Multi-Target Multi-Camera Tracking Module of PP-Human Multi-target multi-camera tracking, or MTMCT, matches the identity of a person in different cameras based on the single-camera tracking. MTMCT is usually applied to the security system and the smart retailing. The MTMCT module of PP-Human aims to provide a multi-target multi-camera pipleline which is simple, and efficient. ## How to Use 1. Download [REID model](https://bj.bcebos.com/v1/paddledet/models/pipeline/reid_model.zip) and unzip it to ```./output_inference```. For the MOT model, please refer to [mot description](./pphuman_mot.md). 2. In the MTMCT mode, input videos are required to be put in the same directory. set the REID "enable: True" in the infer_cfg_pphuman.yml. The command line is: ```python python3 deploy/pipeline/pipeline.py --config deploy/pipeline/config/infer_cfg_pphuman.yml --video_dir=[your_video_file_directory] --device=gpu ``` 3. Configuration can be modified in `./deploy/pipeline/config/infer_cfg_pphuman.yml`. ```python python3 deploy/pipeline/pipeline.py --config deploy/pipeline/config/infer_cfg_pphuman.yml -o REID.model_dir=reid_best/ --video_dir=[your_video_file_directory] --device=gpu ``` ## Intorduction to the Solution MTMCT module consists of the multi-target multi-camera tracking pipeline and the REID model. 1. Multi-Target Multi-Camera Tracking Pipeline ``` single-camera tracking[id+bbox] │ capture the target in the original image according to bbox——│ │ │ REID model quality assessment (covered or not, complete or not, brightness, etc.) │ │ [feature] [quality] │ │ datacollector—————│ │ sort out and filter features │ calculate the similarity of IDs in the videos │ make the IDs cluster together and rearrange them ``` 2. The model solution is [reid-strong-baseline](https://github.com/michuanhaohao/reid-strong-baseline), with ResNet50 as the backbone. Under the above circumstances, the REID model used in MTMCT integrates open-source datasets and compresses model features to 128-dimensional features to optimize the generalization. In this way, the actual generalization result becomes much better. ### Other Suggestions - The provided REID model is obtained from open-source dataset training. It is recommended to add your own data to get a more powerful REID model, notably improving the MTMCT effect. - The quality assessment is based on simple logic +OpenCV, whose effect is limited. If possible, it is advisable to conduct specific training on the quality assessment model. ### Example - camera 1:
- camera 2:
## Reference ``` @InProceedings{Luo_2019_CVPR_Workshops, author = {Luo, Hao and Gu, Youzhi and Liao, Xingyu and Lai, Shenqi and Jiang, Wei}, title = {Bag of Tricks and a Strong Baseline for Deep Person Re-Identification}, booktitle = {The IEEE Conference on Computer Vision and Pattern Recognition (CVPR) Workshops}, month = {June}, year = {2019} } @ARTICLE{Luo_2019_Strong_TMM, author={H. {Luo} and W. {Jiang} and Y. {Gu} and F. {Liu} and X. {Liao} and S. {Lai} and J. {Gu}}, journal={IEEE Transactions on Multimedia}, title={A Strong Baseline and Batch Normalization Neck for Deep Person Re-identification}, year={2019}, pages={1-1}, doi={10.1109/TMM.2019.2958756}, ISSN={1941-0077}, } ```