利用时空信息进行心脏回波视频的视点识别

D. Beymer, T. Syeda-Mahmood, Fei Wang
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引用次数: 20

摘要

二维超声心动图是评价心脏形态和功能的重要诊断手段。在超声检查中,换能器的位置会发生变化,以获得有关心脏功能及其解剖结构的重要信息。换能器观点的知识在自动心脏回波解释中很重要,可以理解被描述的区域以及它们属性的量化。本文研究了从心脏回波视频的时空信息推断换能器视角的问题。与以前的方法不同,我们利用心脏在心脏周期内的运动以及空间信息来区分视点。具体来说,我们使用主动形状模型(ASM)对回波帧中的形状和纹理信息进行建模。通过心脏周期跟踪asm得到的运动信息被投影到视点类的本征运动特征空间中进行匹配。我们报告了与回声中最先进的视图识别方法在各种心脏病患者的大型数据库中的重新实现的比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploiting spatio-temporal information for view recognition in cardiac echo videos
2D Echocardiography is an important diagnostic aid for morphological and functional assessment of the heart. The transducer position is varied during an echo exam to elicit important information about the heart function and its anatomy. The knowledge of the transducer viewpoint is important in automatic cardiac echo interpretation to understand the regions being depicted as well as in the quantification of their attributes. In this paper, we address the problem of inferring the transducer viewpoint from the spatio-temporal information in cardiac echo videos. Unlike previous approaches, we exploit motion of the heart within a cardiac cycle in addition to spatial information to discriminate between viewpoints. Specifically, we use an active shape model (ASM) to model shape and texture information in an echo frame. The motion information derived by tracking ASMs through a heart cycle is then projected into the eigen-motion feature space of the viewpoint class for matching. We report comparison with a re-implementation of state-of-the-art view recognition methods in echos on a large database of patients with various cardiac diseases.
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