利用小波变换和分水岭变换对二维电泳凝胶图像进行分割

R. S. Sengar, A. K. Upadhyay, Manjit Singh, V. Gadre
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引用次数: 11

摘要

由于二维电泳(2DE)凝胶图像存在非线性背景、水平和垂直条纹以及不规则斑点,因此分割是一项具有挑战性的任务。分水岭法是医学图像分割的有力工具,但由于存在噪声和非线性,导致分割过度。文献中可用的解决方案在凝胶图像的情况下未能给出令人满意的结果。提出了一种新的2DE凝胶图像分割方法。分水岭变换的缺陷通过小波域的斑点表征得到了解决。小波变换是一种重要的图像多尺度分析工具。该方法充分利用分水岭变换和小波变换的优点,在小波域中引入分水岭区域对应的连通极大集,并对其进行计算。这使我们能够准确地检测到每个流域区域的斑点。在真实凝胶图像集上的实验结果表明,该方法优于商业化软件。该方法还具有单阈值参数选择的优点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Segmentation of two dimensional electrophoresis gel image using the wavelet transform and the watershed transform
Segmentation of two dimensional electrophoresis (2DE) gel image is a challenging task due to presence of nonlinear backgrounds, horizontal and vertical streaks, and irregular spots. The watershed method is a powerful tool for medical image segmentation, but it produces over-segmented results due to presence of noise and non-linearity. The solutions available in literature have failed to give satisfactory results in case of gel images. This paper presents a novel method for segmentation of 2DE gel images. The pitfalls of the watershed transform have been addressed through spot characterization in the wavelet domain. The wavelet transform is an important multi-scale analysis tool for the images. The proposed method utilizes the best features of both the watershed and the wavelet transforms in which connected maxima set corresponding to each watershed region has been introduced and computed in the wavelet domain. This allows us for accurate detection of the spots in each watershed region. Experimental results on the set of real gel images demonstrate that our method outperforms the commercialized software. Our method has also an advantage of single threshold parameter selection.
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