Segmentation of Offline Palmprint

Yan Zheng, Yuanfang Liu, Guangshun Shi, Jiyi Li, Qingren Wang
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引用次数: 7

Abstract

In this paper, an offline palmprint image is divided into four components: blank regions, knuckle-finger regions, high quality palm regions and unrecoverable low quality palm regions. The high quality palm regions are the ROI of offline palmprint images and the other three regions constitute background regions. A block-based segmentation algorithm is proposed to identify the high quality palm regions from background regions. In experiment section, the segmentation algorithm is tested from three aspects: by human inspection, by comparing the segmentation results with an official pattern and by observing the change of accuracy rate of minutiae after masking the unrecoverable low quality palm regions. Our palmprint database for testing contains 200 image samples and each image comprises 1600 blocks. Only 2.4% of blocks are misclassified. The accuracy rate also increases significantly after masking.
离线掌纹分割
本文将离线掌纹图像分为空白区、指指区、高质量掌纹区和不可恢复的低质量掌纹区四个部分。高质量的掌纹区域是离线掌纹图像的ROI,其他三个区域构成背景区域。为了从背景区域中识别出高质量的手掌区域,提出了一种基于块的分割算法。在实验部分,对分割算法进行了三方面的测试:人工检测,与官方模式的分割结果对比,观察掩盖不可恢复的低质量手掌区域后细节准确率的变化。我们用于测试的掌纹数据库包含200个图像样本,每个图像包含1600个块。只有2.4%的区块被错误分类。掩模后的准确率也显著提高。
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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