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   human action recognition using transfer learning with spatio-temporal templates  
   
نویسنده zebhi s. ,almodarresi s.m.t ,abootalebi v.
منبع مهندسي برق دانشگاه تبريز - 2021 - دوره : 51 - شماره : 2 - صفحه:295 -301
چکیده    A gait energy image (gei) is a spatial template that collapses regions of motion into a single image in which more moving pixels are brighter than others. the discrete wavelet transform template (dwttemp) is a temporal template that represents the time changes of motion. the static and dynamic information of every video is compressed utilizing these templates. in the proposed method, every video is parted into n groups of successive frames, and the gei and dwttemp are made for every group, resulting spatial and temporal templates. transfer learning method has been utilized for classifying. it gives the recognition accuracies of 92.40%, 95.30% and 87.06% for ucf sport, ucf11 and olympic sport action datasets, respectively.
کلیدواژه discrete wavelet transform ,gait energy image ,human activity recognition
آدرس yazd university, electrical engineering department, iran, yazd university, electrical engineering department, iran, yazd university, electrical engineering department, iran
پست الکترونیکی abootalebi@yazd.ac.ir
 
   Human Action Recognition Using Transfer Learning with Spatio-Temporal Templates  
   
Authors Zebhi S. ,AlModarresi S.M.T ,Abootalebi V.
Abstract    A gait energy image (GEI) is a spatial template that collapses regions of motion into a single image in which more moving pixels are brighter than others. The discrete wavelet transform template (DWTTEMP) is a temporal template that represents the time changes of motion. The static and dynamic information of every video is compressed utilizing these templates. In the proposed method, every video is parted into N groups of successive frames, and the GEI and DWTTEMP are made for every group, resulting spatial and temporal templates. Transfer learning method has been utilized for classifying. It gives the recognition accuracies of 92.40%, 95.30% and 87.06% for UCF Sport, UCF11 and Olympic Sport action datasets, respectively.
Keywords Discrete Wavelet Transform ,gait energy image ,human activity recognition
 
 

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