Title :
Efficient local filter bank with over complete spatiotemporal pooling in action recognition
Author :
Yawei Li ; Lizuo Jin ; Feiran Jie ; Changyin Sun
Author_Institution :
Sch. of Autom., Southeast Univ., Nanjing, China
Abstract :
Action recognition task has been researched for years, algorithms based on local spatiotemporal interest points have gained successful results. However, these methods mainly face the problems like: the STIPs detectors only extract a sparse set of features and lack of structural orders. In this paper, we present a local motion filter bank with haar3D filters for action recognition. The filter bank is convoluted with the input volumes to decompose the motions as directions. Then an over complete spatiotemporal pooling stage is advocated to invariant to small shifts and hold the spatiotemporal information. Finally, sharing features are selected from the descriptors to form sparse linear models. The performance is tested in public data sets and gained reasonable results.
Keywords :
channel bank filters; computer vision; convolution; image recognition; STIPs detectors; action recognition task; haar3D filters; local motion filter bank; local spatiotemporal interest points; motion decomposition; overcomplete spatiotemporal pooling; public data sets; sharing features; sparse linear models; structural orders; Detectors; Feature extraction; Optical imaging; Pattern recognition; Spatiotemporal phenomena; Three-dimensional displays; Visualization; Action Recognition; Motion Filter Bank; STIP; Spatiotemporal Pooling;
Conference_Titel :
Control Conference (CCC), 2013 32nd Chinese
Conference_Location :
Xi´an