PyMAF: 3D Human Pose and Shape Regression with Pyramidal Mesh Alignment Feedback Loop **Supplementary Material**

This Supplementary Material provides additional details of our approach and more experimental results that were not included in the main manuscript due to space constraints. In Section S1, we provide more details of our experiments and the implementation of our approach. In Sections S2 and S3, we give the descriptions of the datasets and evaluation metrics used in our experiments. Finally, we include more quantitative and qualitative results in Section S4. We also make available the code and video results at the project page https://hongwenzhang.github.io/pymaf.

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