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Efficient Denoising Technique for CT images to Enhance Brain Hemorrhage Segmentation

机译:用于CT图像的有效去噪技术以增强脑出血分割

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摘要

This paper presents an adaptive denoising approach aiming to improve the visibility and detectability of hemorrhage from brain computed tomography (CT) images. The suggested approach fuses the images denoised by total variation (TV) method, denoised by curvelet-based method, and edge information extracted from the noise residue of TV method. The edge information is extracted from the noise residue of TV method by processing it through curvelet transform. The visual interpretation shows that the proposed approach not only reduces the staircase effect caused by total variation method but also reduces visual distortion induced by curvelet transform in the homogeneous areas of the CT images. The denoising abilities of the proposed method are further evaluated by segmenting the hemorrhagic brain area using region-growing method. The sensitivity, specificity, Jaccard index, and Dice coefficients were calculated for different noise levels. The comparative results show that the significant improvement has yielded in the brain hemorrhage detection from CT images after denoising it with the proposed approach.
机译:本文提出了一种自适应去噪方法,旨在提高脑部计算机断层扫描(CT)图像中出血的可见性和可检测性。所提出的方法融合了通过总变异(TV)方法去噪,通过基于Curvelet的方法去噪的图像以及从TV噪声残留中提取的边缘信息。通过曲波变换对边缘信息进行处理,从电视方法的噪声残差中提取边缘信息。视觉解释表明,所提出的方法不仅减少了由总变化法引起的阶梯效应,而且减少了在CT图像的均匀区域中由Curvelet变换引起的视觉失真。通过使用区域增长法对出血性脑区域进行分割,进一步评估了该方法的去噪能力。计算了不同噪声水平的灵敏度,特异性,Jaccard指数和Dice系数。比较结果表明,在用所提出的方法去噪后,从CT图像检测脑出血方面已取得了显着改善。

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