Clifford Algebra Based Edge Detector for Color Images

S. Franchini, A. Gentile, F. Sorbello, G. Vassallo, S. Vitabile
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引用次数: 10

Abstract

Edge detection is one of the most used methods for feature extraction in computer vision applications. Feature extraction is traditionally founded on pattern recognition methods exploiting the basic concepts of convolution and Fourier transform. For color image edge detection the traditional methods used for gray-scale images are usually extended and applied to the three color channels separately. This leads to increased computational requirements and long execution times. In this paper we propose a new, enhanced version of an edge detection algorithm that treats color value triples as vectors and exploits the geometric product of vectors defined in the Clifford algebra framework to extend the traditional concepts of convolution and Fourier transform to vector fields. Experimental results presented in the paper show that the proposed algorithm achieves detection performance comparable to the classical edge detection methods allowing at the same time for a significant reduction (about 33%) of computational times.
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基于Clifford代数的彩色图像边缘检测器
边缘检测是计算机视觉应用中最常用的特征提取方法之一。特征提取传统上建立在利用卷积和傅里叶变换的基本概念的模式识别方法上。对于彩色图像的边缘检测,通常将传统的灰度图像边缘检测方法进行扩展,分别应用于三个颜色通道。这将导致计算需求的增加和执行时间的延长。在本文中,我们提出了一种新的增强版本的边缘检测算法,该算法将颜色值三元组视为向量,并利用Clifford代数框架中定义的向量的几何乘积将卷积和傅里叶变换的传统概念扩展到向量场。实验结果表明,该算法的检测性能与经典边缘检测方法相当,同时可以显著减少计算时间(约33%)。
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