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Streaming Video Segmentation via Short-Term Hierarchical Segmentation and Frame-by-Frame Markov Random Field Optimization

机译:通过短期分层分段和逐帧Markov随机字段优化流媒体视频分割

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An online video segmentation algorithm, based on short-term hierarchical segmentation (STHS) and frame-by-frame Markov random field (MRF) optimization, is proposed in this work. We develop the STHS technique, which generates initial segments by sliding a short window of frames. In STHS, we apply spatial agglomerative clustering to each frame, and then adopt inter-frame bipartite graph matching to construct initial segments. Then, we partition each frame into final segments, by minimizing an MRF energy function composed of unary and pairwise costs. We compute the unary cost using the STHS initial segments and the segmentation result at the previous frame. We set the pairwise cost to encourage similar nodes to have the same segment label. Experimental results on a video segmentation benchmark dataset, VSB100, demonstrate that the proposed algorithm outperforms state-of-the-art online video segmentation techniques significantly.
机译:在这项工作中提出了基于短期分层分段(STHS)和逐帧Markov随机字段(MRF)优化的在线视频分割算法。我们开发了STHS技术,通过滑动框架的短窗口来产生初始段。在STH中,我们将空间凝聚聚类应用于每个帧,然后采用帧间双链图匹配以构建初始段。然后,通过最小化由一元和成对成本组成的MRF能量函数来将每个帧分配到最终段中。我们使用STHS初始段计算一元成本,并在前一帧处进行分段结果。我们设置成对成本以鼓励类似的节点具有相同的段标签。视频分段基准数据集VSB100的实验结果证明了所提出的算法显着优于最先进的在线视频分段技术。

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