精确边缘检测:用布尔函数表示,在CNN上实现

I. Aizenberg, N. Aizenberg, J. Vandewalle
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引用次数: 15

摘要

本文研究了边缘检测问题。提出将二值图像的边缘检测问题简化为布尔函数的求值问题。对灰度图像进行边缘检测时,对二值平面进行单独处理,并将二值平面进一步整合到图像中。考虑了不同的布尔函数检测对应于向上和向下亮度跨越的边缘,到狭窄的方向(南北,东南-西北等)。所有的处理函数都是9个变量的非阈值布尔函数(这样的变量数量对应于每个像素周围3/spl次/3个局部窗口内的处理)。由于所有的函数都不是阈值,所以我们建议使用具有通用二值神经元的CNN来实现它们。通过学习得到各函数的权重模板。最后给出了软件仿真结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Precise edge detection: representation by Boolean functions, implementation on the CNN
An edge detection problem is considered in the paper. It is proposed to reduce the edge detection problem on binary images to evaluation of the Boolean functions. A separate processing of the binary planes with their further integration into resulting image is used for edge detection on the gray-scale images. The different Boolean functions for detection of edges corresponding to the upward and downward brightness overleaps, to the narrow directions (south-north, south-east-north-west, etc.) are considered. All the processing functions are non-threshold Boolean functions of nine variables (such a number of variables corresponds to the processing within a 3/spl times/3 local window around the each pixel). Since all the functions are not threshold, CNN with universal binary neurons are proposed to be used for their implementation. The weighting templates for all functions are obtained by learning. The software simulation results are also presented.
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