An automatic algorithm for semantic object generation and temporal tracking
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摘要
Automatic semantic video object extraction is an important step for providing content-based video coding, indexing and retrieval. However, it is very difficult to design a generic semantic video object extraction technique, which can provide variant semantic video objects by using the same function. Since the presence and absence of persons in an image sequence provide important clues about video content, automatic face detection and human being generation are very attractive for content-based video database applications. For this reason, we propose a novel face detection and semantic human object generation algorithm. The homogeneous image regions with accurate boundaries are first obtained by integrating the results of color edge detection and region growing procedures. The human faces are detected from these homogeneous image regions by using skin color segmentation and facial filters. These detected faces are then used as object seed for semantic human object generation. The correspondences of the detected faces and semantic human objects along time axis are further exploited by a contour-based temporal tracking procedure.
论文关键词:Edge detection,Region growing,Face detection,Human object generation,Tracking,Key objects
论文评审过程:Received 17 April 2000, Revised 11 October 2000, Accepted 1 March 2001, Available online 2 January 2002.
论文官网地址:https://doi.org/10.1016/S0923-5965(01)00012-1