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AUTHOR(S):

Ngoc Nam Bui, Tan Dat Trinh, Min Kyung Park, Jin Young Kim

 

TITLE

Histogram of Multi-Directional Gabor Filter Bank for Motion Trajectory Feature Extraction

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ABSTRACT

In this paper, we decompose motion flow using multidirectional Gabor filter bank to create robust descriptors for action recognition problem. The dense trajectory is utilized to allocate the Region of Interest (ROI) for extracting Gabor descriptors. In addition, the feature distribution is adopted instead of the conventional sum of energy. Our experiments are conducted in an open data set (UCF11) and our self-constructed one (CNU). The results indicate that the proposed feature outperforms all other ones in both individually and collectively.

KEYWORDS

Gabor histogram, GMM supervector, dense trajectory features

REFERENCES 

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Cite this paper

Ngoc Nam Bui, Tan Dat Trinh, Min Kyung Park, Jin Young Kim. (2016) Histogram of Multi-Directional Gabor Filter Bank for Motion Trajectory Feature Extraction. International Journal of Computers, 1, 83-88

 

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