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Improved Segmentation of MRI Brain Images by Denoising and Contrast Enhancement

机译:通过降噪和对比度增强来改善MRI脑图像的分割

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Background/Objectives: The Rician noise in MRI (Magnetic Resonance Image) degrades the image quality and thus, accuracy in segmentation is reduced and localization of tumour may not be precise. In this paper, a robust approach is proposed which estimates and removes the Rician noise of 2D MRI for improving segmentation and detection of tumours. Methods/Statistical analysis: First, a robust Rician noise estimation algorithm is employed to identify all the pixels with high Rician noise. Second, a bilateral filter based denoising algorithm is employed to filter image in the wavelet domain. Successively a bilateral filter parameter optimization method is adopted, which uses the noise, contrast and frequency components in MRI to select suitable filter parameters for Bilateral Filter (BF). It is suitable for edge preserving and for adaptive denoising to segment image correctly. Further, after denoising the image, the contrast of the image is improved as a pre-processing step before the image segmentation. Next, SVM-based image segmentation algorithm is employed to segment the 2D MRI. Findings: The algorithm is tested both in synthetic and real-time clinical images of tumour affected human brain. The simulation tests show that the denoising and contrast enhancement improves the segmentation of images. The performance of the proposed approach is improved by 29% in segmentation of synthetic images compared to the existing similar techniques. Similarly, an improvement of 22% in segmentation is observed for real-time images. Application/Improvements: This approach shows comparable improvement in with respect to processing of MRI. The same procedure may be adopted for other imaging techniques.
机译:背景/目的:MRI(磁共振图像)中的Rician噪声会降低图像质量,从而降低分割的准确性,并且可能无法精确定位肿瘤。在本文中,提出了一种鲁棒的方法,该方法可以估计和消除2D MRI的Rician噪声,以改善肿瘤的分割和检测。方法/统计分析:首先,采用鲁棒的Rician噪声估计算法来识别所有具有高Rician噪声的像素。其次,采用基于双边滤波器的去噪算法对小波域中的图像进行滤波。继而采用了双边滤波器参数优化方法,该方法利用MRI中的噪声,对比度和频率分量为双边滤波器(BF)选择合适的滤波器参数。它适用于边缘保留和自适应降噪,以正确分割图像。此外,在对图像进行去噪之后,作为图像分割之前的预处理步骤,提高了图像的对比度。接下来,基于SVM的图像分割算法被用来分割2D MRI。结果:该算法在受肿瘤影响的人脑的合成和实时临床图像中均经过测试。仿真测试表明,去噪和对比度增强可以改善图像的分割效果。与现有的类似技术相比,该方法在合成图像分割方面的性能提高了29%。同样,实时图像的分割率提高了22%。应用/改进:这种方法在MRI处理方面显示出可比的改进。对于其他成像技术,可以采用相同的步骤。

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