Improved Segmentation of Cardiac MRI Using Efficient Pre-Processing Techniques

N. Joshi, Sarika Jain
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Abstract

Cardiac Magnetic Resonance Imaging is a popular non-invasive technique used for assessing the cardiac performance. Automating the segmentation helps in increased diagnosis accuracy in considerably less time and effort. In this paper a novel approach has been proposed to improve the automated segmentation process by increasing the accuracy of segmentation and laying focus on efficient pre-processing of the cardiac Magnetic Resonance (MR) image. The pre-processing module in the proposed method includes noise estimation and efficient denoising of images using discrete total variation based Non local means method.Segmentation accuracy is evaluated using measures such as average perpendicular distance and dice similarity coefficient. The performance of all the segmentation techniques is improved. Further segmentation comparison has also been performed using other state-of-the art noise removal techniques for pre-processing and it was observed that the proposed pre-processing technique outperformed other noise removal techniques in improving the segmentation accuracy.
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利用高效预处理技术改进心脏MRI分割
心脏磁共振成像是一种流行的无创技术,用于评估心脏性能。自动分割有助于在相当少的时间和精力内提高诊断的准确性。本文提出了一种新的方法,通过提高分割精度和对心脏磁共振图像进行有效的预处理来改进自动分割过程。该方法的预处理模块包括噪声估计和基于离散全变分的非局部均值方法对图像进行有效去噪。使用平均垂直距离和骰子相似系数等度量来评估分割精度。所有分割技术的性能都得到了提高。进一步的分割比较也使用了其他最先进的去噪技术进行预处理,并观察到所提出的预处理技术在提高分割精度方面优于其他去噪技术。
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