Best Practices for 2-Body Pose Forecasting

The task of collaborative human pose forecasting stands for predicting the future poses of multiple interacting people, given those in previous frames. Predicting two people in interaction, instead of each separately, promises better performance, due to their body-body motion correlations. But the task has remained so far primarily unexplored. In this paper, we review the progress in human pose forecasting and provide an in-depth assessment of the single-person practices that perform best for 2-body collaborative motion forecasting. Our study confirms the positive impact of frequency input representations, space-time separable and fully-learnable interaction adjacencies for the encoding GCN and FC decoding. Other single-person practices do not transfer to 2-body, so the proposed best ones do not include hierarchical body modeling or attention-based interaction encoding. We further contribute a novel initialization procedure for the 2-body spatial interaction parameters of the encoder, which benefits performance and stability. Altogether, our proposed 2-body pose forecasting best practices yield a performance improvement of 21.9% over the state-of-the-art on the most recent ExPI dataset, whereby the novel initialization accounts for 3.5%. See our project page at https://www.pinlab.org/bestpractices2body

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Datasets


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Multi-Person Pose forecasting Expi - common actions split Best Practices for 2-Body Pose Forecasting Average MPJPE (mm) @ 1000 ms 202 # 1
Average MPJPE (mm) @ 600 ms 129 # 1
Average MPJPE (mm) @ 400 ms 86 # 1
Average MPJPE (mm) @ 200 ms 39 # 1
Multi-Person Pose forecasting Expi - unseen actions split Best Practices for 2-Body Pose Forecasting Average MPJPE (mm) @ 800 ms 191 # 1
Average MPJPE (mm) @ 600 ms 149 # 1
Average MPJPE (mm) @ 400 ms 100 # 1

Methods