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Palm-print recognition based on DCT domain statistical features extracted from enhanced image

机译:基于从增强图像中提取的DCT域统计特征的掌纹识别

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In this paper, a feature extraction algorithm for palm-print recognition is proposed based on statistical features of two-dimensional discrete cosine transform (2D-DCT), which efficiently exploits the local spatial variations in a palm-print image. First, adaptive median filtering followed by Top-Hat transform is employed on a given palm-image to obtain palm-line enhancement by reducing the effect of noise and lighting variations. Unlike conventional median filtering, adaptive median filtering operates only on pixels, which are not structurally aligned and can preserve detail while performing overall smoothing operation. The entire enhanced image is segmented into several small spatial modules and 2D-DCT is performed on each module. Instead of considering all DCT coefficients, a set of statistical features are extracted in DCT domain, which drastically reduces the feature dimension and precisely captures the detail variations within the palm-print image. From our extensive experimentations on different palm-print databases, it is found that the performance of the proposed method in terms of recognition accuracy and computational complexity is superior to that of some of the recent methods.
机译:本文提出了一种基于二维离散余弦变换(2D-DCT)统计特征的掌纹识别特征提取算法,该算法有效地利用了掌纹图像中的局部空间变化。首先,在给定的手掌图像上采用自适应中值滤波,然后进行Top-Hat变换,以通过减少噪声和光照变化的影响来获得手掌线增强。与常规中值滤波不同,自适应中值滤波仅对像素进行操作,这些像素在结构上不对齐,并且可以在执行整体平滑操作时保留细节。整个增强图像被分割成几个小的空间模块,并在每个模块上执行2D-DCT。无需考虑所有DCT系数,而是在DCT域中提取一组统计特征,这将极大地减小特征尺寸并精确捕获掌纹图像内的细节变化。从我们在不同掌纹数据库上进行的广泛实验中发现,该方法在识别准确度和计算复杂度方面的性能要优于某些最新方法。

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