基于抽取和非抽取小波变换的指纹图像去噪

V. Humbe, S. Gornale, Ganesh M. Magar, R. Manza, K. Kale
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引用次数: 4

摘要

最近的指纹识别技术已被证明在安全方面是可靠的。但是,有效的识别依赖于指纹图像的质量,并且在处理噪声和低质量图像时是一个复杂的计算机问题。获取指纹图像最常用的方法不需要专业知识,但由于皮肤干燥、皮肤病、污垢或湿度,仍然可能产生高度扭曲的图像。因此,这类图像必须去噪才能识别。许多研究者已经证明了离散小波变换(DWT)在图像去噪中的优越性。由于小波变换在时间/空间上的非不变性,在图像去噪中存在一定的局限性。SWT的时不变特性有助于图像去噪。本文利用小波变换研究了不同分解水平的正交小波变换和双正交小波变换的有效性。通过测量结构失真来评价去噪图像的质量,并测量了各层次的计算处理时间。我们的结果显示,coif1在级别5给出了最好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fingerprint Image De-noising through Decimated and Un-decimated Wavelet Transforms (WT)
This Recent technologies for recognizing Fingerprints have proven as regards as reliable for security purposes. But, the efficient recognition is depending on the quality of fingerprint image and it is a complex computer problem while dealing with noisy and low quality images. The most common methods used to acquire the fingerprint images do not need expertise, but highly distorted images are still possible because of dryness of skin, skin disease, dirt or humidity. Therefore such type of images must be de-noised for recognition. Many researchers have proved advantages of Discrete Wavelet Transform (DWT) for image de-nosing. DWT in image de-noising has limitations due to its non-invariance in time/space. The time invariant property of SWT is useful for de-noising the image. In this paper we have studied effectiveness of orthogonal and bi-orthogonal wavelet transforms with different decomposition level using SWT. And the quality of de-noised image is evaluated through structural distortion measurement and also measured the computational processing time at each level. Our results show coif1 at level 5gives the best results.
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