An Attractor-Guided Neural Networks for Skeleton-Based Human Motion Prediction
Pengxiang Ding, Junying Wang, Jianqin Yin

TL;DR
This paper introduces an attractor-guided neural network that models global and local joint relations for more natural and accurate human motion prediction, outperforming existing methods on multiple datasets.
Contribution
It proposes a novel balance attractor to enhance global joint coordination modeling, improving the realism and accuracy of skeleton-based human motion prediction.
Findings
Outperforms state-of-the-art methods in short-term predictions.
Effective in long-term human motion prediction.
Demonstrates robustness across multiple datasets.
Abstract
Joint relation modeling is a curial component in human motion prediction. Most existing methods tend to design skeletal-based graphs to build the relations among joints, where local interactions between joint pairs are well learned. However, the global coordination of all joints, which reflects human motion's balance property, is usually weakened because it is learned from part to whole progressively and asynchronously. Thus, the final predicted motions are sometimes unnatural. To tackle this issue, we learn a medium, called balance attractor (BA), from the spatiotemporal features of motion to characterize the global motion features, which is subsequently used to build new joint relations. Through the BA, all joints are related synchronously, and thus the global coordination of all joints can be better learned. Based on the BA, we propose our framework, referred to Attractor-Guided…
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Taxonomy
TopicsHuman Pose and Action Recognition · Gait Recognition and Analysis · Human Motion and Animation
