We have extended our sports video browsing framework for personal video recorders, such as recordable-DVD recorders, blu-ray disc recorders and/or hard disc recorders, to music segment detection. Our extension to Japanese broadcast music video programs consists of detecting audio segment boundaries such as conversations with guests followed by music/song etc. Our proposed system first identifies the music/song scenes using audio analysis, and then adjusts the start/end position by detecting video shot changes, so as to achieve accurate detection of the music segment thus enabling rapid browsing. Our preliminary results indicate that our audio-only summarization with scene change support works well for music video content. We can therefore integrate the enhancement into our product at a low computational cost.
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This article discusses the one-sided simultaneous tolerance and confidence bounds in the linear regression model. We approach the problem from the area of test theory. The bounds are constructed by projecting aregion of the test statistics, and we then propose a necessary and sufficient condition for obtaining a taut tolerance bound by the method. Finally, for illustrative purposes, we give several examples of one-sided simultaneous bounds with various shapes.
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