3D human motion prediction, predicting future poses from a given sequence, is an issue of great significance and challenge in computer vision and machine intelligence, which can help machines in understanding human behaviors. Due to the increasing development and understanding of Deep Neural Networks (DNNs) and the availability of large-scale human motion datasets, the human motion prediction has been remarkably advanced with a surge of interest among academia and industrial community. In this context, a comprehensive survey on 3D human motion prediction is conducted for the purpose of retrospecting and analyzing relevant works from existing released literature. In addition, a pertinent taxonomy is constructed to categorize these existing approaches for 3D human motion prediction. In this survey, relevant methods are categorized into three categories: human pose representation, network structure design, and \textit{prediction target}. We systematically review all relevant journal and conference papers in the field of human motion prediction since 2015, which are presented in detail based on proposed categorizations in this survey. Furthermore, the outline for the public benchmark datasets, evaluation criteria, and performance comparisons are respectively presented in this paper. The limitations of the state-of-the-art methods are discussed as well, hoping for paving the way for future explorations.
翻译:3D人类运动预测,预测某一序列的未来构成,是计算机视觉和机器智能中一个非常重要和具有挑战性的问题,可以帮助机器了解人类行为。由于深神经网络(DNNs)的不断发展和了解以及大规模人类运动数据集的可用性,人类运动预测取得了显著的进展,学术界和产业界对人体运动预测的兴趣激增。在这方面,对3D人类运动预测进行了全面调查,目的是对现有发布文献中的有关作品进行回溯检查和分析。此外,还建立了相关的分类法,将这些现有的3D人类运动预测方法分类。在这次调查中,相关方法被分为三类:人姿势代表、网络结构设计、以及2015年以来人类运动预测领域的所有相关期刊和会议文件,根据本调查中的拟议分类,详细介绍了这些文件。此外,本文件还分别介绍了公共基准数据集、评价标准和业绩比较的大纲。对未来探索方法的局限性,并讨论了为未来铺路的希望。