准确的轮廓监视-改进运动分割使用图形切割

Daniel Chen, S. Denman, C. Fookes, S. Sridharan
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引用次数: 5

摘要

轮廓是计算机视觉中许多应用程序使用的常见特征。对于这些算法中的许多算法来说,准确地从背景中分割感兴趣的对象以提取轮廓是必不可少的。运动分割是一种流行的从背景中分割运动物体的技术,但是这种算法容易分割不良,特别是在噪声或低对比度条件下。在本文中,[1]将运动检测与图切相结合的工作扩展为两种新的实现,旨在允许运动分割的输出具有更大的不确定性,为图切算法提供更少的限制输入。使用手动分割的地面真实数据在ETISEO数据集的一部分上对所提出的算法进行了评估,结果表明,与单独的运动分割和[1]的基线系统相比,所提出的算法的性能有所提高。
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Accurate Silhouettes for Surveillance - Improved Motion Segmentation Using Graph Cuts
Silhouettes are common features used by many applications in computer vision. For many of these algorithms to perform optimally, accurately segmenting the objects of interest from the background to extract the silhouettes is essential. Motion segmentation is a popular technique to segment moving objects from the background, however such algorithms can be prone to poor segmentation, particularly in noisy or low contrast conditions. In this paper, the work of [1] combining motion detection with graph cuts, is extended into two novel implementations that aim to allow greater uncertainty in the output of the motion segmentation, providing a less restricted input to the graph cut algorithm. The proposed algorithms are evaluated on a portion of the ETISEO dataset using hand segmented ground truth data, and an improvement in performance over the motion segmentation alone and the baseline system of [1] is shown.
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