Diverse Human Motion Prediction via Gumbel-Softmax Sampling from an Auxiliary Space
Lingwei Dang, Yongwei Nie, Chengjiang Long, Qing Zhang, Guiqing Li

TL;DR
This paper introduces a novel sampling strategy using Gumbel-Softmax to generate highly diverse and accurate human motion predictions from a deep generative model, surpassing previous methods.
Contribution
It proposes an auxiliary space sampling method with a Gumbel-Softmax approach and a diversity-promoting loss, enhancing diversity in human motion prediction.
Findings
Significantly improves diversity of predictions
Achieves higher accuracy compared to state-of-the-art methods
Demonstrates effectiveness through extensive experiments
Abstract
Diverse human motion prediction aims at predicting multiple possible future pose sequences from a sequence of observed poses. Previous approaches usually employ deep generative networks to model the conditional distribution of data, and then randomly sample outcomes from the distribution. While different results can be obtained, they are usually the most likely ones which are not diverse enough. Recent work explicitly learns multiple modes of the conditional distribution via a deterministic network, which however can only cover a fixed number of modes within a limited range. In this paper, we propose a novel sampling strategy for sampling very diverse results from an imbalanced multimodal distribution learned by a deep generative model. Our method works by generating an auxiliary space and smartly making randomly sampling from the auxiliary space equivalent to the diverse sampling from…
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Taxonomy
TopicsHuman Pose and Action Recognition · Human Motion and Animation · Video Surveillance and Tracking Methods
