Home >

news ヘルプ

論文・著書情報


タイトル
和文: 
英文:Spectral Graph Wavelets for Skeleton-based 3D Action Recognition 
著者
和文: Tommi Kerola, 井上 中順, 篠田 浩一.  
英文: Tommi Kerola, Nakamasa Inoue, Koichi Shinoda.  
言語 English 
掲載誌/書名
和文:電子情報通信学会技術研究報告 PRMU 
英文:Technical Reports of IEICE PRMU 
巻, 号, ページ vol. 114    no. 454    pp. 131-136
出版年月 2015年2月19日 
出版者
和文:電子情報通信学会 
英文:The Institute of Electronics, Information and Communication Engineers (IEICE) 
会議名称
和文:パターン認識・メディア理解研究会(PRMU) 
英文:Technical Reports of IEICE PRMU 
開催地
和文:宮城県仙台市 
英文:Sendai-shi, Miyagi Pref. 
公式リンク http://www.ieice.org/ken/paper/20150220KBw1/eng/
 
アブストラクト We present spectral graph skeletons (SGS), a novel graph-based method for action recognition from depth cameras. The contribution of this paper is to leverage a spectral graph wavelet transform (SGWT) for creating an overcomplete representation of an action signal lying on a 3D skeleton graph. The resulting SGS descriptor is efficiently computable in time linear in the action sequence length. We investigate the suitability of our method by experiments on three publicly available datasets, resulting in performance comparable to state-of-the-art action recognition approaches. Namely, our method achieves 91.4% accuracy on the challenging MSRAction3D dataset in the cross-subject setting. SGS also achieves 96.0% and 98.8% accuracy on the MSRActionPairs3D and UCF-Kinect datasets, respectively.

©2007 Tokyo Institute of Technology All rights reserved.