English | [简体中文](CONTRIB_cn.md) # PaddleDetection applied for specific scenarios We provide some models implemented by PaddlePaddle to detect objects in specific scenarios, users can download the models and use them in these scenarios. | Task | Algorithm | Box AP | Download | |:---------------------|:---------:|:------:| :-------------------------------------------------------------------------------------: | | Vehicle Detection | YOLOv3 | 54.5 | [model](https://paddlemodels.bj.bcebos.com/object_detection/vehicle_yolov3_darknet.tar) | | Pedestrian Detection | YOLOv3 | 51.8 | [model](https://paddlemodels.bj.bcebos.com/object_detection/pedestrian_yolov3_darknet.tar) | ## Vehicle Detection One of major applications of vehichle detection is traffic monitoring. In this scenary, vehicles to be detected are mostly captured by the cameras mounted on top of traffic light columns. ### 1. Network The network for detecting vehicles is YOLOv3, the backbone of which is Dacknet53. ### 2. Configuration for training PaddleDetection provides users with a configuration file [yolov3_darknet.yml](https://github.com/PaddlePaddle/PaddleDetection/blob/master/configs/yolov3_darknet.yml) to train YOLOv3 on the COCO dataset, compared with this file, we modify some parameters as followed to conduct the training for vehicle detection: * max_iters: 120000 * num_classes: 6 * anchors: [[8, 9], [10, 23], [19, 15], [23, 33], [40, 25], [54, 50], [101, 80], [139, 145], [253, 224]] * label_smooth: false * nms/nms_top_k: 400 * nms/score_threshold: 0.005 * milestones: [60000, 80000] * dataset_dir: dataset/vehicle ### 3. Accuracy The accuracy of the model trained and evaluated on our private data is shown as followed: AP at IoU=.50:.05:.95 is 0.545. AP at IoU=.50 is 0.764. ### 4. Inference Users can employ the model to conduct the inference: ``` export CUDA_VISIBLE_DEVICES=0 export PYTHONPATH=$PYTHONPATH:. python -u tools/infer.py -c contrib/VehicleDetection/vehicle_yolov3_darknet.yml \ -o weights=https://paddlemodels.bj.bcebos.com/object_detection/vehicle_yolov3_darknet.tar \ --infer_dir contrib/VehicleDetection/demo \ --draw_threshold 0.2 \ --output_dir contrib/VehicleDetection/demo/output ``` Some inference results are visualized below: ![](../images/VehicleDetection_001.jpeg) ![](../images/VehicleDetection_005.png) ## Pedestrian Detection The main applications of pedetestrian detection include intelligent monitoring. In this scenary, photos of pedetestrians are taken by surveillance cameras in public areas, then pedestrian detection are conducted on these photos. ### 1. Network The network for detecting vehicles is YOLOv3, the backbone of which is Dacknet53. ### 2. Configuration for training PaddleDetection provides users with a configuration file [yolov3_darknet.yml](https://github.com/PaddlePaddle/PaddleDetection/blob/master/configs/yolov3_darknet.yml) to train YOLOv3 on the COCO dataset, compared with this file, we modify some parameters as followed to conduct the training for pedestrian detection: * max_iters: 200000 * num_classes: 1 * snapshot_iter: 5000 * milestones: [150000, 180000] * dataset_dir: dataset/pedestrian ### 3. Accuracy The accuracy of the model trained and evaluted on our private data is shown as followed: AP at IoU=.50:.05:.95 is 0.518. AP at IoU=.50 is 0.792. ### 4. Inference Users can employ the model to conduct the inference: ``` export CUDA_VISIBLE_DEVICES=0 export PYTHONPATH=$PYTHONPATH:. python -u tools/infer.py -c contrib/PedestrianDetection/pedestrian_yolov3_darknet.yml \ -o weights=https://paddlemodels.bj.bcebos.com/object_detection/pedestrian_yolov3_darknet.tar \ --infer_dir contrib/PedestrianDetection/demo \ --draw_threshold 0.3 \ --output_dir contrib/PedestrianDetection/demo/output ``` Some inference results are visualized below: ![](../images/PedestrianDetection_001.png) ![](../images/PedestrianDetection_004.png)