## 2D Hand Keypoint Demo
### 2D Hand Image Demo #### Using gt hand bounding boxes as input We provide a demo script to test a single image, given gt json file. *Hand Pose Model Preparation:* The pre-trained hand pose estimation model can be downloaded from [model zoo](https://mmpose.readthedocs.io/en/latest/topics/hand%282d%2Ckpt%2Crgb%2Cimg%29.html). Take [onehand10k model](https://download.openmmlab.com/mmpose/top_down/resnet/res50_onehand10k_256x256-e67998f6_20200813.pth) as an example: ```shell python demo/top_down_img_demo.py \ ${MMPOSE_CONFIG_FILE} ${MMPOSE_CHECKPOINT_FILE} \ --img-root ${IMG_ROOT} --json-file ${JSON_FILE} \ --out-img-root ${OUTPUT_DIR} \ [--show --device ${GPU_ID or CPU}] \ [--kpt-thr ${KPT_SCORE_THR}] ``` Examples: ```shell python demo/top_down_img_demo.py \ configs/hand/2d_kpt_sview_rgb_img/topdown_heatmap/onehand10k/res50_onehand10k_256x256.py \ https://download.openmmlab.com/mmpose/top_down/resnet/res50_onehand10k_256x256-e67998f6_20200813.pth \ --img-root tests/data/onehand10k/ --json-file tests/data/onehand10k/test_onehand10k.json \ --out-img-root vis_results ``` To run demos on CPU: ```shell python demo/top_down_img_demo.py \ configs/hand/2d_kpt_sview_rgb_img/topdown_heatmap/onehand10k/res50_onehand10k_256x256.py \ https://download.openmmlab.com/mmpose/top_down/resnet/res50_onehand10k_256x256-e67998f6_20200813.pth \ --img-root tests/data/onehand10k/ --json-file tests/data/onehand10k/test_onehand10k.json \ --out-img-root vis_results \ --device=cpu ``` #### Using mmdet for hand bounding box detection We provide a demo script to run mmdet for hand detection, and mmpose for hand pose estimation. Assume that you have already installed [mmdet](https://github.com/open-mmlab/mmdetection). *Hand Box Model Preparation:* The pre-trained hand box estimation model can be found in [det model zoo](/demo/docs/mmdet_modelzoo.md). *Hand Pose Model Preparation:* The pre-trained hand pose estimation model can be downloaded from [pose model zoo](https://mmpose.readthedocs.io/en/latest/topics/hand%282d%2Ckpt%2Crgb%2Cimg%29.html). ```shell python demo/top_down_img_demo_with_mmdet.py \ ${MMDET_CONFIG_FILE} ${MMDET_CHECKPOINT_FILE} \ ${MMPOSE_CONFIG_FILE} ${MMPOSE_CHECKPOINT_FILE} \ --img-root ${IMG_ROOT} --img ${IMG_FILE} \ --out-img-root ${OUTPUT_DIR} \ [--show --device ${GPU_ID or CPU}] \ [--bbox-thr ${BBOX_SCORE_THR} --kpt-thr ${KPT_SCORE_THR}] ``` ```shell python demo/top_down_img_demo_with_mmdet.py demo/mmdetection_cfg/cascade_rcnn_x101_64x4d_fpn_1class.py \ https://download.openmmlab.com/mmpose/mmdet_pretrained/cascade_rcnn_x101_64x4d_fpn_20e_onehand10k-dac19597_20201030.pth \ configs/hand/2d_kpt_sview_rgb_img/topdown_heatmap/onehand10k/res50_onehand10k_256x256.py \ https://download.openmmlab.com/mmpose/top_down/resnet/res50_onehand10k_256x256-e67998f6_20200813.pth \ --img-root tests/data/onehand10k/ \ --img 9.jpg \ --out-img-root vis_results ``` ### 2D Hand Video Demo We also provide a video demo to illustrate the results. Assume that you have already installed [mmdet](https://github.com/open-mmlab/mmdetection). *Hand Box Model Preparation:* The pre-trained hand box estimation model can be found in [det model zoo](/demo/docs/mmdet_modelzoo.md). *Hand Pose Model Preparation:* The pre-trained hand pose estimation model can be found in [pose model zoo](https://mmpose.readthedocs.io/en/latest/topics/hand%282d%2Ckpt%2Crgb%2Cimg%29.html). ```shell python demo/top_down_video_demo_with_mmdet.py \ ${MMDET_CONFIG_FILE} ${MMDET_CHECKPOINT_FILE} \ ${MMPOSE_CONFIG_FILE} ${MMPOSE_CHECKPOINT_FILE} \ --video-path ${VIDEO_PATH} \ --out-video-root ${OUTPUT_VIDEO_ROOT} \ [--show --device ${GPU_ID or CPU}] \ [--bbox-thr ${BBOX_SCORE_THR} --kpt-thr ${KPT_SCORE_THR}] ``` Note that `${VIDEO_PATH}` can be the local path or **URL** link to video file. Examples: ```shell python demo/top_down_video_demo_with_mmdet.py demo/mmdetection_cfg/cascade_rcnn_x101_64x4d_fpn_1class.py \ https://download.openmmlab.com/mmpose/mmdet_pretrained/cascade_rcnn_x101_64x4d_fpn_20e_onehand10k-dac19597_20201030.pth \ configs/hand/2d_kpt_sview_rgb_img/topdown_heatmap/onehand10k/res50_onehand10k_256x256.py \ https://download.openmmlab.com/mmpose/top_down/resnet/res50_onehand10k_256x256-e67998f6_20200813.pth \ --video-path https://user-images.githubusercontent.com/87690686/137441388-3ea93d26-5445-4184-829e-bf7011def9e4.mp4 \ --out-video-root vis_results ``` ### Speed Up Inference Some tips to speed up MMPose inference: For 2D hand pose estimation models, try to edit the config file. For example, 1. set `flip_test=False` in [hand-res50](https://github.com/open-mmlab/mmpose/tree/e1ec589884235bee875c89102170439a991f8450/configs/hand/resnet/onehand10k/res50_onehand10k_256x256.py#L56). 2. set `post_process='default'` in [hand-res50](https://github.com/open-mmlab/mmpose/tree/e1ec589884235bee875c89102170439a991f8450/configs/hand/resnet/onehand10k/res50_onehand10k_256x256.py#L57).