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README.md cdece0b32a 第一次提交 10 months ago

README.md

Top-down SimCC-based pose estimation

Top-down methods divide the task into two stages: object detection, followed by single-object pose estimation given object bounding boxes. At the 2nd stage, SimCC based methods reformulate human pose estimation as two classification tasks for horizontal and vertical coordinates, and uniformly divide each pixel into several bins, thus obtain the keypoint coordinates given the features extracted from the bounding box area, following the paradigm introduced in SimCC: a Simple Coordinate Classification Perspective for Human Pose Estimation.

Results and Models

COCO Dataset

Results on COCO val2017 with detector having human AP of 56.4 on COCO val2017 dataset

Model Input Size AP AR Details and Download
ResNet-50+SimCC 384x288 0.735 0.790 resnet_coco.md
ResNet-50+SimCC 256x192 0.721 0.781 resnet_coco.md
S-ViPNAS-MobileNet-V3+SimCC 256x192 0.695 0.755 vipnas_coco.md
MobileNet-V2+SimCC(wo/deconv) 256x192 0.620 0.678 mobilenetv2_coco.md