Open AccessJournal Article
Motion String: A Motion Capture Data Representation for Behavior Segmentation
Yang Yuedong,Wang Lili,Hao Aimin +2 more
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About: This article is published in Journal of Computer Research and Development. The article was published on 15 Mar 2008. and is currently open access. The article focuses on the topics: String (computer science) & Motion capture.
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Citations
A genetic algorithm approach to human motion capture data segmentation
TL;DR: This paper for the first time introduces the genetic algorithm and the sparse learning technique to the problem of MoCap data segmentation, leading to excellent segmentation performance as experimentally demonstrated.
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A Novel Method for Human Motion Capture Data Segmentation
Ziyi Wu,Weibin Liu,Weiwei Xing +2 more
- 01 Nov 2017
TL;DR: This method can not only solve the NP-hard problem of the graph cut model, but also solve the problem of selecting the kernel matrix of the weighted kernel k-means.
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A Symbolic Representation of Motion Capture Data for Behavioral Segmentation.
Ruxiang Wei,Weibin Liu,Weiwei Xing +2 more
- 01 Sep 2015
TL;DR: This paper presents a novel symbolic representation of human motion capture data, called the Behavior String, and based on the BS, a further motion segmentation algorithm for human motion Capture data is proposed.
Dynamic Focus Capture Method and Its Application
Shoujin Wang,Yang Cao,Jingang Shi +2 more
- 01 Apr 2016
TL;DR: The main task of the motion capture is to analyze and process the data from the sensor, and abstract to recognize the action.
Segmentation of Human Motion Capture Data Based on Laplasse Eigenmaps
Xiaodong Xie,Rui Liu,Dongsheng Zhou,Xiaopeng Wei,Qiang Zhang +4 more
- 26 Jun 2017
TL;DR: A method for human motion capture data segmentation based on Laplacian Eigenmaps (LE) algorithm to obtain motion clips with independent semantics is proposed.
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