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자료유형
학술저널
저자정보
저널정보
SK텔레콤 Telecommunications Review Telecommunications Review 제22권 제6호
발행연도
2012.1
수록면
976 - 988 (13page)

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This paper deals with a new classification algorithm of human shapes using the region-based shape descriptor and mean shift clustering. The main goal is to identify that the extracted binary object regions are human shapes. This paper combines the angular radial transform (ART) with mean shift clustering, which is a new approach to human shape classification. The ART, a region-based shape descriptor in MPEG-7, is applied to model the binary human shapes. We exploit 3 radial and 12 angular frequencies for modeling human shapes. The 36-D ART vectors for human shapes are trained using mean shift clustering, and several representative ART vectors are selected for multi-mode distribution of human shapes in 36-D ART vector space. The human shapes are identified by the distance between the modeled representative vectors and ART vector of extracted object region. The distance thresholds are statistically optimized in the Training step. The ART vectors of human shapes are learned using thousands of illustration images and real human objects extracted by background subtraction. Experiments are performed on various illustration images and video frames combined with background subtraction. The experimental results show that the proposed algorithm is robust and efficient for human object recognition. The proposed method is invariant and stable to object rotation and scales. It is expected that the proposed algorithm of human shapes recognition is useful for object recognition, video surveillance, vehicular pedestrian detection, and so on.

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