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Real-time compressed-domain spatiotemporal segmentation and ontologies for video indexing and retrieval

机译:用于视频索引和检索的实时压缩域时空分割和本体

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摘要

In this paper, a novel algorithm is presented for the real-time, compressed-domain, unsupervised segmentation of image sequences and is applied to video indexing and retrieval. The segmentation algorithm uses motion and color information directly extracted from the MPEG-2 compressed stream. An iterative rejection scheme based on the bilinear motion model is used to effect foreground/background segmentation. Following that, meaningful foreground spatiotemporal objects are formed by initially examining the temporal consistency of the output of iterative rejection, clustering the resulting foreground macroblocks to connected regions and finally performing region tracking. Background segmentation to spatiotemporal objects is additionally performed. MPEG-7 compliant low-level descriptors describing the color, shape, position, and motion of the resulting spatiotemporal objects are extracted and are automatically mapped to appropriate intermediate-level descriptors forming a simple vocabulary termed object ontology. This, combined with a relevance feedback mechanism, allows the qualitative definition of the high-level concepts the user queries for (semantic objects, each represented by a keyword) and the retrieval of relevant video segments. Desired spatial and temporal relationships between the objects in multiple-keyword queries can also be expressed, using the shot ontology. Experimental results of the application of the segmentation algorithm to known sequences demonstrate the efficiency of the proposed segmentation approach. Sample queries reveal the potential of employing this segmentation algorithm as part of an object-based video indexing and retrieval scheme.
机译:本文介绍了一种新颖的算法,用于实时,压缩域,图像序列的无监督分割,并应用于视频索引和检索。分割算法使用从MPEG-2压缩流中直接提取的运动和颜色信息。基于双线性运动模型的迭代抑制方案用于实现前景/背景分割。在此之后,通过最初检查迭代拒绝输出的时间一致性,将所产生的前景宏块聚类为连接区域并最终执行区域跟踪来形成有意义的前景时态对象。另外执行背景分割到时尚物体。 MPEG-7兼容描述生成的时空对象的颜色,形状,位置和运动的低级描述符被提取,并自动映射到形成简单词汇的对象本体的适当中间级描述符。这与相关性反馈机制组合允许高级概念的定性定义(语义对象,每个由关键字表示的语义对象)和相关视频段的检索。也可以使用拍摄本体表示多关键字查询中对象之间的所需空间和时间关系。分段算法应用于已知序列的实验结果证明了所提出的分割方法的效率。样本查询揭示了使用该分割算法的可能性作为基于对象的视频索引和检索方案的一部分。

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