Past Movements-Guided Motion Representation Learning for Human Motion Prediction
- URL: http://arxiv.org/abs/2408.02091v1
- Date: Sun, 4 Aug 2024 17:00:37 GMT
- Title: Past Movements-Guided Motion Representation Learning for Human Motion Prediction
- Authors: Junyu Shi, Baoxuan Wang,
- Abstract summary: We propose a self-supervised learning framework designed to enhance motion representation.
The framework consists of two stages: first, the network is pretrained through the self-reconstruction of past sequences, and the guided reconstruction of future sequences based on past movements.
Our method reduces the average prediction errors by 8.8% across Human3.6, 3DPW, and AMASS datasets.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Human motion prediction based on 3D skeleton is a significant challenge in computer vision, primarily focusing on the effective representation of motion. In this paper, we propose a self-supervised learning framework designed to enhance motion representation. This framework consists of two stages: first, the network is pretrained through the self-reconstruction of past sequences, and the guided reconstruction of future sequences based on past movements. We design a velocity-based mask strategy to focus on the joints with large-scale moving. Subsequently, the pretrained network undergoes finetuning for specific tasks. Self-reconstruction, guided by patterns of past motion, substantially improves the model's ability to represent the spatiotemporal relationships among joints but also captures the latent relationships between past and future sequences. This capability is crucial for motion prediction tasks that solely depend on historical motion data. By employing this straightforward yet effective training paradigm, our method outperforms existing \textit{state-of-the-art} methods, reducing the average prediction errors by 8.8\% across Human3.6M, 3DPW, and AMASS datasets. The code is available at https://github.com/JunyuShi02/PMG-MRL.
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