磁共振成像模型的虚幻轮廓检测

S. Madarasmi, T. Pong, D. Kersten
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引用次数: 7

摘要

本文提出了一种从图像轮廓中获取相对深度信息的计算模型。局部遮挡特性,如t结点和凹性,用于在不同的相对深度到达不同表面的全局感知。基于遮挡轮廓的局部信息,采用多层表示将每个图像像素划分到合适的深度平面。使用贝叶斯框架将轮廓定义的约束和先验约束结合起来。然后确定对应于最大后验概率的解决方案,从而为每个图像站点或像素进行深度分配和表面分配。该算法在各种轮廓图像上进行了测试,包括两类虚幻表面:Kanizsa(1979)和线终止虚幻轮廓。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Illusory contour detection using MRF models
This paper presents a computational model for obtaining relative depth information from image contours. Local occlusion properties such as T-junctions and concavity are used to arrive at a global percept of distinct surfaces at various relative depths. A multilayer representation is used to classify each image pixel into the appropriate depth plane based on the local information from the occluding contours. A Bayesian framework is used to incorporate the constraints defined by the contours and the prior constraints. A solution corresponding to the maximum posteriori probability is then determined, resulting in a depth assignment and surface assignment for each image site or pixel. The algorithm was tested on various contour images, including two classes of illusory surfaces: the Kanizsa (1979) and the line termination illusory contours.<>
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