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Analysis of cardiac wall motion estimation methods

机译:心壁运动估计方法分析

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Cardiac disease remains a major killer in the world. Improving the management of cardiovascular disease is one of the greatest challenges facing healthcare Diagnostic techniques in cardiology require complex image analysis of single images and image sequences obtained by a variety of medical imaging modalities such as ECG gated MR, CT, and ultrasound. In particular, useful information about the cardiac function can be extracted from motion analysis of a beating heart. Accurate quantitative of heart motion and deformation are of importance for evaluating normal and abnormal cardiac physiology and mechanics. Optical flow algorithms attempt to estimate the vector field, which describes spatial movements of every image point over time, and provides important information for motion analysis. While feature-based and correlation-based optical flow methods attempt to locate features or simply track similar objects between frames, gradient-based methods calculate spatial and temporal derivatives for every position in the image and use those for estimation of the optical flow vector field. As the optical flow techniques are the most known approaches in estimating of wall motion, we decided to compare the practical algorithm based on this technique.
机译:心脏病仍然是世界上的主要杀手。改善心血管疾病的管理是心脏病学中医疗诊断技术面临的最大挑战之一,需要复杂的图像分析单个图像和由各种医学成像模式获得的图像序列,例如ECG门控MR,CT和超声波。特别地,可以从跳动心脏的运动分析中提取有关心功能的有用信息。精确定量的心脏运动和变形对于评估正常和异常的心脏生理学和力学是重要的。光学流算法尝试估计矢量字段,其描述了每个图像点随时间的空间运动,并提供了运动分析的重要信息。虽然基于特征和基于相关的相关的光学流方法尝试定位特征或简单地跟踪帧之间的类似对象,基于梯度的方法计算图像中的每个位置的空间和时间衍生物,并使用那些估计光学流量矢量字段的空间和时间衍生物。由于光学流动技术是估计壁运动的最着名的方法,我们决定基于该技术进行比较实用的算法。

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