Face Detection, Tracking, and Recognition for Broadcast Video
نویسندگان
چکیده
Human face processing techniques for broadcast video, including face detection, tracking, and recognition, has attracted a lot of research interest because of its value in various applications, such as video structuring, indexing, retrieval, and summarization. The main reason for this is that the human face provides rich information for spotting the appearance of certain people of interest, such as government leaders in news video, the pitcher in a baseball video, or a hero in a movie, and is the basis for interpreting facts.
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