利用简单网络实现运动预测中的视距和角度不变性

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Haichuan Zhao, Xudong Ru, Peng Du, Shaolong Liu, Na Liu, Xingce Wang, Zhongke Wu
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引用次数: 0

摘要

近来,人体运动预测受到了广泛关注,并取得了显著成就。然而,目前的方法主要依赖于理想数据集的训练和测试,忽略了实际场景中常见的视距和视角变化的影响。在本研究中,我们通过确保在视距和视角发生变化时仍能保持稳定的性能来解决模型不变性问题。为此,我们采用了黎曼几何方法来约束神经网络的学习过程,从而能够使用简单的网络预测不变性。此外,这还增强了运动预测在各种场景中的应用。我们的框架利用黎曼几何将运动编码到一个新颖的运动空间,从而利用简单的网络实现视距和视角不变的预测。具体来说,我们提出了指定路径传输平方根速度函数,以帮助消除视角等价类,并将运动序列编码到扁平化空间中。通过几何方法进行运动编码,可在非扁平化空间中线性化优化问题,并有效提取运动信息,从而使所提出的方法能够利用简单的网络实现具有竞争力的性能。在人类 3.6M 和 CMU MoCap 上的实验结果表明,所提出的框架具有极佳的性能,并且不受观看距离和观看角度的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Achieving view-distance and -angle invariance in motion prediction using a simple network.

Recently, human motion prediction has gained significant attention and achieved notable success. However, current methods primarily rely on training and testing with ideal datasets, overlooking the impact of variations in the viewing distance and viewing angle, which are commonly encountered in practical scenarios. In this study, we address the issue of model invariance by ensuring robust performance despite variations in view distances and angles. To achieve this, we employed Riemannian geometry methods to constrain the learning process of neural networks, enabling the prediction of invariances using a simple network. Furthermore, this enhances the application of motion prediction in various scenarios. Our framework uses Riemannian geometry to encode motion into a novel motion space to achieve prediction with an invariant viewing distance and angle using a simple network. Specifically, the specified path transport square-root velocity function is proposed to aid in removing the view-angle equivalence class and encode motion sequences into a flattened space. Motion coding by the geometry method linearizes the optimization problem in a non-flattened space and effectively extracts motion information, allowing the proposed method to achieve competitive performance using a simple network. Experimental results on Human 3.6M and CMU MoCap demonstrate that the proposed framework has competitive performance and invariance to the viewing distance and viewing angle.

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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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