Watershed algorithm for moving object extraction considering energy minimization by snakes

K. Imamura, Masaki Hiraoka, H. Hashimoto
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引用次数: 2

Abstract

MPEG-4, which is a video coding standard, supports object-based functionalities for high efficiency coding. MPEG-7, a multimedia content description interface, handles the object data in, for example, retrieval and/or editing systems. Therefore, extraction of semantic video objects is an indispensable tool that benefits these newly developed schemes. In the present paper, we propose a technique that extracts the shape of moving objects by combining snakes and watershed algorithm. The proposed method comprises two steps. In the first step, snakes extract contours of moving objects as a result of the minimization of an energy function. In the second step, the conditional watershed algorithm extracts contours from a topographical surface including a new function term. This function term is introduced to improve the estimated contours considering boundaries of moving objects obtained by snakes. The efficiency of the proposed approach in moving object extraction is demonstrated through computer simulations.
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考虑蛇能量最小化的运动目标提取分水岭算法
MPEG-4是一种视频编码标准,支持基于对象的高效编码功能。MPEG-7是一种多媒体内容描述接口,用于处理对象数据,例如,检索和/或编辑系统。因此,语义视频对象的提取是这些新方案不可或缺的工具。本文提出了一种结合蛇形和分水岭算法提取运动物体形状的方法。该方法包括两个步骤。在第一步中,蛇提取运动物体的轮廓,这是能量函数最小化的结果。第二步,条件分水岭算法从包含新函数项的地形表面提取轮廓。引入该函数项是为了改进蛇形获得的考虑运动目标边界的估计轮廓。通过计算机仿真验证了该方法在运动目标提取中的有效性。
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