Preprocessing Latent-Fingerprint Images For Improving Segmentation Using Morphological Snakes

Hajer Walhazi, Lamia Rzouga Haddada, A. Maalej, N. Amara
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引用次数: 3

Abstract

Latent fingerprints have played a critical role in identifying criminals and suspects. However, latent fingerprint identification is more complicated than plain and rolled fingerprints mainly due to poor ridge quality, complex background noise and overlapped structured noise in latent images. Subsequently, a latent-fingerprint image requires to be segmented to extract the fingerprint region from the background. The paper proposes a novel and efficient technique for latent-fingerprint segmentation. Our approach is based mainly on two fundamental ideas: i) applying the conversion from RGB color model to YCBCR color model and the Gaussian blur technique as a preprocessing before segmentation, and ii) using morphologic active contours without edges to define the fingerprint region based on an evolving contour that starts its rapid evolution in a stable state from the inside fingerprint. The technique is tested on two fingerprint databases: FVC2004 and NIST SD27. Our experimental results evaluate the miss-classified pixels and yield high segmentation accuracy.
基于形态学蛇的潜在指纹图像预处理改进分割
潜在指纹在识别罪犯和嫌疑人方面起着至关重要的作用。然而,潜在指纹识别比普通指纹和卷指纹更复杂,主要原因是潜在图像的脊质量差,背景噪声复杂,结构噪声重叠。随后,需要对潜在指纹图像进行分割,从背景中提取指纹区域。提出了一种新的高效的潜在指纹分割技术。我们的方法主要基于两个基本思想:1)在分割前应用RGB颜色模型到YCBCR颜色模型的转换和高斯模糊技术作为预处理;2)使用无边缘的形态活动轮廓来定义指纹区域,该轮廓基于从指纹内部开始快速演化的稳定状态的演化轮廓。该技术在两个指纹数据库上进行了测试:FVC2004和NIST SD27。我们的实验结果评估了缺失分类像素,并获得了较高的分割精度。
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