期刊文献+

基于三高斯滤波的低质指纹图像增强方法 被引量:2

A low quality fingerprint image enhancement algorithm based on tri-Gaussian filter
下载PDF
导出
摘要 低质指纹图像在司法刑侦过程中普遍存在,往往需要人工参与鉴别.因此,符合人类视觉特性的指纹图像处理方法研究具有一定的实用价值.将非经典感受野三高斯数学模型引入指纹图像处理,提出一种新的低质指纹图像增强算法.首先通过三高斯单边滤波获得邻域图像的主观感觉亮度;然后对指纹图像进行局部对比度增强.通过分析研究指纹脊谷交替分布的特性,结合三高斯模型自身特性,得到针对指纹图像的三高斯单边滤波的参数自适应模型和局部对比度调整参数.对比实验结果表明,该方法取得了整体和局部的亮度增强效果,突出灰暗区域的细节特征,尤其适用于低质指纹图像的处理. Low quality fingerprint recognition is an all-pervading problem of criminal investigation,which asks for extra manual efforts to address.Therefore,the fingerprint image processing method in accordance with human visual characteristics has certain practical value.This paper introduces the tri-Gaussian model of the concentric receptive field to the fingerprint image processing,and proposes a novel image enhancement algorithm especially for low-quality fingerprint image processing.The algorithm goes like this: firstly obtain the perceptual luminance of the neighbouring image by tri-Gaussian unilateral filtering;and then enhance the local contrast of the given fingerprint image.Based on analysis of the ridge-valley alternatedly distributing properties of fingerprint images and the disinhibitory properties of concentric receptive field,we have obtained the adaptive parameter model of tri-Gaussian unilateral filter especially for fingerprint images as well as the local contrast adjustment parameters.The contrast experiments indicate that the proposed method is effective to enhance the global and local luminance,stress the details of dark areas,and especially appropriate to assist the low-quality fingerprint identification.
出处 《智能系统学报》 北大核心 2012年第6期489-493,共5页 CAAI Transactions on Intelligent Systems
基金 国家自然科学基金重大研究计划资助项目(90920013)
关键词 三高斯模型 指纹增强 非经典感受野 单边滤波 tri-Gaussian model fingerprint enhancement concentric receptive field unilateral filter
  • 相关文献

参考文献11

  • 1MALTON1 D, MAIO D, JAIN A K, et al. Handbook of fin- geqJrint recognition [ M ]. 2nd ed. London: Springer-Vet- lag, 2009: 131-133.
  • 2HONG I,, WAN Y, JA|N A K. Fingerprint image enhance- ment: algorithms and perfomlance evaluation [ J ]. IEEE Transactions on Pattern Analysis and Machine Intelligence, 1998, 20(8): 777-789.
  • 3KIM B G, PARK D J. Adaptive image nonnalisation based on block processing for enhancement of fingerprint image [ J ]. Electronics I,etters, 2002, 38 (14) : 696-698.
  • 4ZttlX1N S, GOVINDARAJU V. Fingerprint image enhance- ment based on skin profile. Approximation [ C]//Proc Int Conf on Pattern Recognition. Hong Kong, China, 2006, 3: 714-717.
  • 5GONZALEZ R C, WOODS R E. Digital image processing [ M]. 2nd ed. Beijing: PubLishing House of Electronics In- dustry, 2003: 78-88.
  • 6WIN Z M, SEIN M M. Fingerprint recognition system for low quality images [ C ]//SICE Annual Conference 2011. Tokyo, Japan, 2011: 1133-1139.
  • 7AKRAM M U, AYAZ A, IMTIAZ J. Morphological and gradient based fingerprint image segmentation [ C ]//2011 International Conference on Information and Communication Technologies(ICICT). Karachi, Pakistan, 2011 : 1-4.
  • 8MA J, JING X J, ZHANG Y Y. Simple effective fingerprint segmentation algorithm for low quality images [ C//2010 3rd IEEE International Corfferenee on Broadband Network and Multimedia Technology" (IC-BNMT). Beijing, China, 2010 : 855-859.
  • 9GREENBERG S, ALADJEM M, KOGAN D. Fingerprint image enhancement using filtering techniques [ Jl. Real- Time hnaging, 2002, 8(3): 227-236.
  • 10LI C Y, PEI X. Role of the extensive area outside the x- cell receptive field in brightness information transmission [J]. Vision Research, 1991, 31 (9) : 1529-1540.

二级参考文献12

  • 1邱芳土,李朝义.同心圆感受野去抑制特性的数学模拟[J].生物物理学报,1995,11(2):214-220. 被引量:15
  • 2Kolb H. How the retina works [J]. American Scientist, 2003, 91(1): 29-35.
  • 3Tao L, Asari V K. A robust image enhancement technique for improving image visual quality in shadowed scenes [C] // Proceedings of the 4th International Conference on Image and Video Retrieval, Singapore, 2005:395-404.
  • 4Land E H. The Retinex theory of color vision [J]. Scientific American, 1977, 237(6): 108-129.
  • 5Jobson D J, Rahman Z, Woodell G A. Properties and performance of a center/surround Retinex [J]. IEEE Transactions on Image Processing, 1997, 6(3): 451-462.
  • 6Webster M A. Human colour perception and its adaptation [J]. Network Computation in Neural Systems, 1996,17(4): 587-634.
  • 7Rodieck R W. Quantitative analysis of cat retinal ganglion cell response to visual stimuli [J]. Vision Research, 1965, 5 (11): 583-601.
  • 8Li C Y, Pei X, Zhow Y X, etal. Role of the extensive area outside the x cell receptive field in brightness information transmission [J]. Vision Research, 1991, 31(9) : 1529-1540.
  • 9Gonzalez R C.数字图像处理[M].北京:电子工业出版社,2003.467—470.
  • 10许欣,陈强,王平安,孙怀江,夏德深.消除光晕现象的快速Retinex图像增强[J].计算机辅助设计与图形学学报,2008,20(10):1325-1331. 被引量:46

共引文献13

同被引文献12

引证文献2

二级引证文献4

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部