Online ISSN:1349-8606
Progress in Informatics  
No.7 March 2010  
Page 33-42  
 
People detection based on co-occurrence of appearance and spatio-temporal features
Yuji YAMAUCHI, Hironobu FUJIYOSHI, Yuji IWAHORI, and Takeo KANADE

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