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Video indexing and summarization using motion activity.

机译:使用运动活动进行视频索引和摘要。

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In this dissertation, video-indexing techniques using low-level motion activity characteristics and their application to video summarization are presented. The MPEG-7 motion activity feature is defined as the subjective level of activity or motion in a video segment. First, a novel psychophysical and analytical framework for automatic measurement of motion activity in compliance with its subjective perception is developed. A psychophysically sound subjective ground truth for motion activity and a test-set of video clips is constructed for this purpose. A number of low-level, compressed domain motion vector based, known and novel descriptors are then described. It is shown that these descriptors successfully estimate the subjective level of motion activity of video clips. Furthermore, the individual strengths and limitations of the proposed descriptors are determined using a novel pairwise comparison framework. It is verified that the intensity of motion activity descriptor of the MPEG-7 standard is one of the best performers, while a novel descriptor proposed in this dissertation performs comparably or better.; A new descriptor for the spatial distribution of motion activity in a scene is proposed. This descriptor is supplementary to the intensity of motion activity descriptor. The new descriptor is shown to have comparable query retrieval performance to the current spatial distribution of motion activity descriptor of the MPEG-7 standard.; The insights obtained from the motion activity investigation are applied to video summarization. A novel approach to summarizing and skimming through video using motion activity is presented. The approach is based on allocation of playback time to video segments proportional to the motion activity of the segments. Low activity segments are played faster than high activity segments in such a way that a constant level of activity is maintained throughout the video. Since motion activity is a low-complexity descriptor, the proposed summarization techniques are extremely fast. The summarization techniques are successfully used on surveillance video. The proposed techniques can also be used as a preprocessing stage for more complex summarization and content analysis techniques, thus providing significant cost gains.
机译:本文介绍了利用低水平运动活动特性的视频索引技术及其在视频摘要中的应用。 MPEG-7运动活动功能定义为视频段中的活动或运动的主观水平。首先,开发了一种新颖的心理和分析框架,用于根据其主观感知自动测量运动活动。为此目的,构建了一种针对运动活动的心理上合理的主观地面事实和一个视频剪辑测试集。然后描述了许多基于低级,压缩域运动矢量的,已知的和新颖的描述符。结果表明,这些描述符成功地估计了视频剪辑的运动活动的主观水平。此外,使用新颖的成对比较框架确定了提出的描述符的个体优势和局限性。可以证明,MPEG-7标准的运动活动描述符的强度是性能最好的描述符之一,而本文提出的新型描述符的性能可比或更好。提出了一种用于场景中运动活动的空间分布的新描述符。该描述符是对运动活动描述符强度的补充。新的描述符显示出与MPEG-7标准的运动活动描述符的当前空间分布具有可比的查询检索性能。从运动活动调查中获得的见解可应用于视频摘要。提出了一种使用运动活动对视频进行摘要和浏览的新颖方法。该方法基于将回放时间分配给与片段的运动活动成比例的视频片段。低活动片段的播放速度比高活动片段的播放速度快,从而可以在整个视频中保持恒定的活动水平。由于运动活动是一种低复杂度的描述符,因此提出的汇总技术非常快。摘要技术已成功用于监控视频。所提出的技术还可以用作更复杂的摘要和内容分析技术的预处理阶段,从而显着提高成本。

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