Finger Vein Image Retrieval via Coding Scale-varied Superpixel Feature

Kuikui Wang, Lu Yang, Gongping Yang, Xin Luo, Kun Su, Yilong Yin
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引用次数: 6

Abstract

Finger vein image retrieval is one significant technique for performing fast identification especially in large-scale applications. However, most existing retrieval methods were based on fixed-scale feature of non-overlapped rectangular image block, in which the representation ability of feature and the local consistency of vein pattern were both overlooked. And the weak encoding (e.g., predefined threshold based binarization) was also limited the retrieval performance. Focusing on these problems, this paper proposes a novel finger vein image retrieval framework based on similarity-preserving encoding of scale-varied superpixel feature. In the framework, locally consistent pixels in one superpixel are used as a unit of feature representation, and the feature length is varied with the category of the superpixel classified by the variance of lowest dimensional feature. Additionally, the feature compaction and feature rotation based encoding can minimize the quantization loss and preserve the similarity between the scale-varied feature and the encoded binary codes. Experimental results on six public finger vein databases demonstrate that the superiority of the proposed coding scale-varied superpixel feature based retrieval approach over the state-of-the-arts.
基于编码尺度变化的超像素特征的手指静脉图像检索
手指静脉图像检索是实现快速识别的重要技术之一,特别是在大规模应用中。然而,现有的检索方法大多是基于非重叠矩形图像块的固定尺度特征,忽略了特征的表示能力和静脉模式的局部一致性。弱编码(如基于预定义阈值的二值化)也限制了检索性能。针对这些问题,本文提出了一种基于尺度变化超像素特征的相似性保持编码的手指静脉图像检索框架。该框架以一个超像素中的局部一致像素作为特征表示单位,根据最低维特征方差对超像素进行分类,特征长度随超像素类别的不同而变化。此外,基于特征压缩和特征旋转的编码可以最大限度地减少量化损失,并保持尺度变化特征与编码的二进制码之间的相似性。在6个公共指静脉数据库上的实验结果表明,基于编码尺度变化的超像素特征检索方法优于现有的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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