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[Paper] Semantic Concept Detection based on Spatial Pyramid Matching and Semi-supervised Learning
2013
ITE Transactions on Media Technology and Applications
Analyzing video for semantic content is very important for finding the desired video among a huge amount of accumulated video data. One conventional method for detecting objects depicted in video is called the bag-of-visual-words method, and is based on local feature occurrence frequencies. We propose a method that improves on the detection accuracy of traditional method by dividing video frames into overlapped sub-regions of various sizes. The method computes local and global features for each
doi:10.3169/mta.1.190
fatcat:lsqfd3zydffpbkvws5ibyeshba