一个简单的轮廓检测方案

Gopal Datt Joshi, J. Sivaswamy
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引用次数: 31

摘要

我们提出了一种计算简单且通用的方案,用于检测真实图像中的所有显著目标轮廓。该方案的灵感来自于灵长类动物初级视觉皮层中80%的神经元所表现出的环绕影响机制。它是基于轮廓的局部上下文显著影响轮廓的全局显著性的观察。该方案包括两个步骤:首先,利用梯度计算找到图像中所有点的边缘响应,第二步,通过其周围的响应来调制点的边缘响应。在本文中,我们给出了使用Sobel边缘算子和环绕影响的掩模运算来实现该方案的结果。该方案已在大量图像上进行了成功的测试。与同样基于环绕影响的另一种轮廓检测器相比,所提出的检测器的性能在计算和定性上都比较有利。因此,该方案可以作为基于形状的识别和图像检索等高级任务的低成本预处理步骤。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A simple scheme for contour detection
We present a computationally simple and general purpose scheme for the detection of all salient object contours in real images. The scheme is inspired by the mechanism of surround influence that is exhibited in 80% of neurons in the primary visual cortex of primates. It is based on the observation that the local context of a contour significantly affects the global saliency of the contour. The proposed scheme consists of two steps: first find the edge response at all points in an image using gradient computation and in the second step modulate the edge response at a point by the response in its surround. In this paper, we present the results of implementing this scheme using a Sobel edge operator followed by a mask operation for the surround influence. The proposed scheme has been tested successfully on a large set of images. The performance of the proposed detector compares favourably both computationally and qualitatively, in comparison with another contour detector which is also based on surround influence. Hence, the proposed scheme can serve as a low cost preprocessing step for high level tasks such shape based recognition and image retrieval.
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