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A Holistic, In-Compression Approach to Mining Independent Motion Segments for Massive Surveillance Video Collections

机译:一种整体压缩方法,用于挖掘独立的运动片段,以进行大规模监视视频收藏

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This chapter describes a large scale surveillance video data mining approach for those segments that contain independently moving targets. Given the typical scenario where the video data collections are massive in size, We propose a holistic, in-compression approach, called Linear System Consistency Analysis (LSCA), to efficient video data mining for those independent motion segments. By efficient, we mean that the mining speed is close to or even faster than real-time in "normal" platforms (we do not assume using special hardware or any parallel machines) while still maintaining a good mining quality. Theoretical and experimental analyses demonstrate and validate this holistic, in-compression approach to solving for video mining problem for temporal independent motion segmentation.
机译:本章介绍了针对包含独立移动目标的那些部分的大规模监视视频数据挖掘方法。考虑到视频数据集合规模庞大的典型情况,我们提出了一种整体的压缩方法,称为线性系统一致性分析(LSCA),可以有效地挖掘那些独立运动段的视频数据。所谓高效,是指在“正常”平台(我们不假定使用特殊硬件或任何并行机器)中的采矿速度接近或什至比实时速度还要快,同时仍保持良好的采矿质量。理论和实验分析证明并验证了这种整体的压缩方法来解决视频挖掘问题,以实现时间独立运动分割。

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