基于通用自组织特征提取器和快速Gabor小波变换的目标识别

H. Ozer, R. Sundaram
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引用次数: 1

摘要

本文提出了一种受生物学启发的物体识别算法,该算法可以容忍二维(2D)仿射变换,如图像平面上的缩放和平移,以及物体的三维(3D)变换,如光照变化和深度旋转。该算法通过使用Gabor小波和自组织映射分层提取目标特征来实现这一目标。目标特征的学习是一种无监督的学习方式,与视觉皮层的特征学习过程是一致的。对算法进行鲁棒性分析。用支持向量机(SVM)分类器测试算法的分类效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Object Recognition with Generic Self Organizing Feature Extractors and Fast Gabor Wavelet Transform
This paper presents a biologically inspired object recognition algorithm that is tolerant to two dimensional (2D) affine transformations such as scaling and translation in the image plane and three-dimensional (3D) transformations of an object such as illumination changes and rotation in depth. The algorithm achieves this goal by extracting object features using Gabor wavelets and self-organizing maps in a hierarchical manner. Object features are learned in an unsupervised way which is consistent with the feature learning process in the visual cortex. The algorithm is analyzed for robustness. A support vector machine (SVM) classifier is used to test the classification efficiency of the algorithm.
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