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Locally weighted PCA regression to recover missing markers in human motion data.

Kieu, H. D., Yu, H., Li, Z. and Zhang, J. J., 2022. Locally weighted PCA regression to recover missing markers in human motion data. PLoS One, 17 (8), e0272407.

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DOI: 10.1371/journal.pone.0272407

Abstract

"Missing markers problem", that is, missing markers during a motion capture session, has been raised for many years in Motion Capture field. We propose the locally weighted principal component analysis (PCA) regression method to deal with this challenge. The main merit is to introduce the sparsity of observation datasets through the multivariate tapering approach into traditional least square methods and develop it into a new kind of least square methods with the sparsity constraints. To the best of our knowledge, it is the first least square method with the sparsity constraints. Our experiments show that the proposed regression method can reach high estimation accuracy and has a good numerical stability.

Item Type:Article
ISSN:1932-6203
Uncontrolled Keywords:Algorithms; Humans; Least-Squares Analysis; Motion; Principal Component Analysis
Group:Faculty of Media & Communication
ID Code:37350
Deposited By: Symplectic RT2
Deposited On:15 Aug 2022 10:55
Last Modified:15 Aug 2022 10:55

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