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Statictics of Gabor features for coin recognition

机译:Gabor硬币识别功能的统计数据

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We present an image based approach for coin classification. Gabor wavelets are used to extract features for local texture representation. To achieve rotation-invariance, concentric ring structure is used to divide the coin image into a number of small sections. Statistics of Gabor coefficients within each section is then concatenated into a feature vector for whole image representation. Matching between two coin images are done via Euclidean distance measurement and the nearest neighbor classifier. The public MUSCLE database consisting of over 10,000 images is used to test our algorithm, results show that significant improvements over edge distance based methods have been achieved.
机译:我们提出一种基于图像的硬币分类方法。 Gabor小波用于提取局部纹理表示的特征。为了实现旋转不变性,同心环结构用于将硬币图像分为多个小部分。然后将每个部分内的Gabor系数的统计信息连接成一个特征向量,以表示整个图像。两个硬币图像之间的匹配是通过欧几里德距离测量和最近的邻居分类器完成的。使用由10,000幅图像组成的公共MUSCLE数据库来测试我们的算法,结果表明,与基于边缘距离的方法相比,已经取得了显着改进。

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