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README.md
Top-down heatmap-based pose estimation
Top-down methods divide the task into two stages: human detection and pose estimation.
They perform human detection first, followed by single-person pose estimation given human bounding boxes. Instead of estimating keypoint coordinates directly, the pose estimator will produce heatmaps which represent the likelihood of being a keypoint.
Various neural network models have been proposed for better performance. The popular ones include stacked hourglass networks, and HRNet.