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Contour tracking in echocardiographic sequences via sparse representation and dictionary learning

机译:通过稀疏表示和字典学习在超声心动图序列中进行轮廓跟踪

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This paper presents a dynamical appearance model based on sparse representation and dictionary learning for tracking both endocardial and epicardial contours of the left ventricle in echocardiographic sequences. Instead of learning offline spatiotemporal priors from databases, we exploit the inherent spatiotemporal coherence of individual data to constraint cardiac contour estimation. The contour tracker is initialized with a manual tracing of the first frame. It employs multiscale sparse representation of local image appearance and learns online multiscale appearance dictionaries in a boosting framework as the image sequence is segmented frame-by-frame sequentially. The weights of multiscale appearance dictionaries are optimized automatically. Our region-based level set segmentation integrates a spectrum of complementary multilevel information including intensity, multiscale local appearance, and dynamical shape prediction. The approach is validated on twenty-six 4D canine echocardiographic images acquired from both healthy and post-infarct canines. The segmentation results agree well with expert manual tracings. The ejection fraction estimates also show good agreement with manual results. Advantages of our approach are demonstrated by comparisons with a conventional pure intensity model, a registration-based contour tracker, and a state-of-the-art database-dependent offline dynamical shape model. We also demonstrate the feasibility of clinical application by applying the method to four 4D human data sets.
机译:本文提出了一种基于稀疏表示和字典学习的动态外观模型,用于跟踪超声心动图序列中左心室的心内膜和心外膜轮廓。而不是从数据库中学习离线时空先验,我们利用单个数据的固有时空一致性来约束心脏轮廓估计。轮廓跟踪器通过手动跟踪第一帧进行初始化。它采用局部图像外观的多尺度稀疏表示,并在按图像顺序逐帧分割图像的提升框架中学习在线多尺度外观字典。自动对多尺度外观词典的权重进行优化。我们基于区域的水平集分割集成了一系列互补的多层信息,包括强度,多尺度局部外观和动态形状预测。该方法在从健康犬和梗塞后犬获得的二十六个4D犬超声心动图图像上得到了验证。分割结果与专家手动跟踪非常吻合。射血分数估计值也与人工结果显示出良好的一致性。通过与常规的纯强度模型,基于注册的轮廓跟踪器和最新的依赖数据库的离线动态形状模型进行比较,证明了我们方法的优势。通过将方法应用于四个4D人体数据集,我们还证明了临床应用的可行性。

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