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A sparse representation denoising algorithm for finger-vein image based on dictionary learning

机译:基于字典学习的手指静脉图像的稀疏表示去噪算法

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摘要

As an important method of biometric authentication, finger-vein recognition utilizes the unique finger-vein patterns to identify individuals at a high level of accuracy and safety. However, noise components, inherent in finger-vein images, pose a formidable challenge for extracting reliable finger-vein features for recognition. To tackle this challenge, intensive efforts have been directed at sparse representation (SR) methods, which can find the best representative of a test sample by a sparse linear combination of training samples (atoms) from a dictionary. Previous SR approaches treat training atoms equally for image representations, even if these atoms may vary in their effectiveness as feature descriptors, thus jeopardizing the denoising and recognition performances. To overcome this limitation, the present study proposed an adaptive SR with distance-based dictionary learning (DDL), enabling the ability to target more informative training samples. Specifically, based on the Euclidean distance, atoms in the dictionary are classified into two groups: the high-information and the low-information. Their weights for feature representations are assigned based on the distance entropy. Experimental results indicate that the developed SR-DDL denoising method, can suppress image noises and subsequently enhance the image recognition performance.
机译:作为生物认证的重要方法,手指静脉识别利用独特的手指静脉图案来以高精度和安全性识别个体。然而,噪声分量是指静脉图像中固有的,对提取可靠的手指静脉特征来构成强大的挑战,以便识别。为了解决这一挑战,已经针对稀疏表示(SR)方法的密集努力,这可以通过训练样本(原子)的稀疏线性组合来找到测试样本的最佳代表。以前的SR接近同样地处理训练原子以用于图像表示,即使这些原子可能与特征描述符的有效性变化,从而危及去噪和识别性能。为了克服这种限制,本研究提出了一种具有基于距离的字典学习(DDL)的自适应SR,使得能够瞄准更具信息丰富的训练样本。具体地,基于欧几里德距离,字典中的原子被分类为两组:高信息和低信息。它们的重量是根据距离熵分配的特征表示的权重。实验结果表明,开发的SR-DDL去噪方法,可以抑制图像噪声并随后提高图像识别性能。

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