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Robust human posture analysis using incremental learning and recall based on degree of confidence of feature points

机译:基于特征点的置信度,使用增量学习和回忆功能进行稳健的人体姿势分析

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摘要

Purpose - The purpose of this paper is to present an approach to improve the accuracy of estimating feature points of human body on a vision-based motion capture system (MCS) by using the variable-density self-organizing map (VDSOM). Design/methodology/approach - The VDSOM is a kind of self-organizing map (SOM) and has an ability to learn training samples incrementally. The authors let VDSOM learn 3D feature points of human body when the MCS succeeded in estimating them correctly. On the other hand, one or more 3D feature point could not be estimated correctly, the VDSOM is used for the other purpose. The SOM including VDSOM has an ability to recall a part of weight vector which have learned in the learning process. This ability is used to recall correct patterns and complement such incorrect feature points by replacing such incorrect feature points with them. Findings - Experimental results show that the approach is effective for estimation of human posture robustly compared with the other methods. Originality/value - The proposed approach is interesting for the collaboration between an MCS and an incremental learning.
机译:目的-本文的目的是提出一种使用可变密度自组织图(VDSOM)来提高基于视觉的运动捕获系统(MCS)上人体特征点估计精度的方法。设计/方法/方法-VDSOM是一种自组织图(SOM),具有逐步学习训练样本的能力。当MCS正确估计了3D特征点时,作者可以让VDSOM学习人体的3D特征点。另一方面,无法正确估计一个或多个3D特征点,VDSOM用于其他目的。包括VDSOM在内的SOM具有调用在学习过程中学习到的部分权重向量的能力。此功能用于调用正确的模式,并通过用它们替换不正确的特征点来补充不正确的特征点。研究结果-实验结果表明,与其他方法相比,该方法可有效地有效估计人体姿势。独创性/价值-提出的方法对于MCS和增量学习之间的协作很有趣。

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