Object Contour Detection Using Spatio-temporal Self-sim

H. Takeshima, T. Ida, Toshimitsu Kaneko
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Abstract

A novel contour detector that refines a rough boundary between an object and a background to a precise boundary in moving pictures robustly is proposed. To estimate boundaries of objects, the proposed method uses self-similar block matching (SSBM) in spatio-temporal 3-D space. SSBM, which searches a larger similar block for each block placed near a boundary, estimates contours correctly. In this paper, it is shown analytically that the robustness of spatio-temporal SSBM is superior to that of conventional 2-D SSBM. Since SSBM does not assume contour smoothness, the proposed algorithm can detect sharp corners more accurately than the methods using smooth constraints such as Snake. Experimental results show that the proposed method is effective for estimating precise regions of objects even if pictures are noisy
基于时空自模拟的目标轮廓检测
提出了一种新的轮廓检测器,可将运动图像中物体与背景之间的粗糙边界鲁棒地细化为精确边界。该方法在时空三维空间中使用自相似块匹配(SSBM)来估计目标边界。SSBM为靠近边界的每个块搜索更大的相似块,可以正确地估计轮廓。分析表明,时空弹道导弹的鲁棒性优于传统的二维弹道导弹。由于SSBM不假设轮廓光滑,因此该算法可以比使用光滑约束(如Snake)的方法更准确地检测到尖角。实验结果表明,该方法可以有效地估计目标的精确区域,即使图像中存在噪声
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