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A Graph-Based Framework for Video Object Segmentation and Extraction in Feature Space

机译:基于图形对象分段和特征空间提取的基于图形对象分段和提取的框架

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Video segmentation is the task of grouping pixels in successive video frames into perceptually coherent regions. It is a preliminary step to solve higher level problems such as automated surveillance, object tracking, video summarization, video indexing and retrieval. For consumer videos, video segmentation is a useful tool for extracting relevant and interesting content from such video sequence for further analysis or re-purposing of the visual content. Given an unannotated video sequence captured by either a static or hand-held camera, our graph-based approach first effectively models the data in a high dimensional feature space, which emphasizes the correlation between similar pixels while reducing the inter-class connectivity between different objects. The graph model fuses appearance, spatial, and temporal information to break a volumetric video sequence into semantic spatiotemporal key-segments. By further grouping the key-segments, a binary segmentation is able to extract a moving object of interest from a video sequence based on its unique and distinguishable regional properties. Experiment results show the robustness of our approach, which has achieved comparable or better performance when compared to several unsupervised methods.
机译:视频分割是在连续的视频帧中分组像素的任务,进入感知相干区域。它是解决更高级别问题的初步步骤,例如自动监视,对象跟踪,视频摘要,视频索引和检索。对于消费者视频,视频分割是一种有用的工具,用于从这种视频序列中提取相关和有趣内容以进一步分析或重新定义视觉内容。给定由静态或手持式摄像机捕获的未讨犯的视频序列,我们的基于图形的方法首先有效地模拟了高维特征空间中的数据,它强调了类似像素之间的相关性,同时减少了不同对象之间的帧间连接。图形模型熔断外观,空间和时间信息,将体积视频序列分解为语义时空键段。通过进一步分组密钥段,二进制分割能够基于其唯一和可区分的区域属性从视频序列中提取感兴趣的移动对象。实验结果表明,与几种无人监督的方法相比,我们的方法的稳健性具有可比或更好的性能。

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