Brain tumor pixels detection using adaptive wavelet based histogram thresholding and fine windowing

S. Salwe, R. Raut, P. Hajare
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引用次数: 9

Abstract

In recent years, image processing had covered a wide area over medical applications in diagnosis of wide variety of diseases in medical images. Brain tumor detection is one of the most widely used applications by vast researchers. In this paper a novel approach is presented for detection of affected mass (tumor) in magnetic resonance images (MRI). Two level wavelet transform is used to decompose the brain image with mother wavelet ‘db6’. The horizontal, vertical and the diagonal components at both the levels are further decomposed to level five using histogram for each of the component using one dimensional wavelet transform. By finding global minima at level five, and then mapped at the component histogram, a threshold value is found out. The component then is thresholded using this adaptive threshold. The original image is then reconstructed with the obtained components using this course segmentation. The approximation component at level one is unaltered. Lastly a windowing technique is used to eliminate the false detection due to light in-homogeneity or due to hard tissues, which uses a window based threshold. Results after fine segmentation showed that normal patient images showed complete black region in the final segmented image whereas malignant images showed the region of interest after segmentation. The MRI images from a research institute were obtained and the results after segmentation were validated from an expert from the same research institute.
基于自适应小波直方图阈值和精细窗的脑肿瘤像素检测
近年来,图像处理在医学领域的应用已经非常广泛,医学图像中各种疾病的诊断都得到了广泛的应用。脑肿瘤检测是众多研究人员最广泛使用的应用之一。本文提出了一种在磁共振图像(MRI)中检测肿瘤的新方法。采用二级小波变换对脑图像进行母小波' db6 '分解。水平,垂直和对角线组件在这两个级别进一步分解为级别5使用直方图的每个组件使用一维小波变换。通过在第5层找到全局最小值,然后映射到组件直方图上,找到一个阈值。然后使用此自适应阈值对组件进行阈值设置。然后利用该过程分割得到的分量对原始图像进行重构。第一级的近似分量不变。最后,采用基于窗口的阈值技术,消除了由于光不均匀性或硬组织导致的误检。精细分割后的结果表明,正常患者图像在最终分割的图像中呈现完整的黑色区域,而恶性患者图像在分割后呈现感兴趣的区域。获得某研究所的MRI图像,分割后的结果由同一研究所的专家进行验证。
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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