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Motion Tracking for Beating Heart Based on Sparse Statistic Pose Modeling

机译:基于稀疏统计姿势建模的跳动运动跟踪

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A novel region-based method to track beating heart is proposed. Sparse statistical pose modeling is used to reconstruct the region of interest (ROI) on beating heart surface. Firstly, a high-complexity thin plate spline is employed to pre-reconstructed the ROI of a series of frames. The 3D pose data of the ROI from the pre-reconstructed results are extracted to train a low-complexity model based on the sparse statistical analysis. The new trained low-complexity model is robust and efficient for ROI reconstruction of the following frames. The proposed model significantly reduces the redundant degrees of freedom to fit the surface of the heart. A constraint item is added to the objective function which describes the 3D tracking problem to avoid erroneous convergence of the efficient second-order minimization (ESM) optimization algorithm. The new proposed method is evaluated on the phantom heart video and the in vivo video obtained by the da Vinci surgical system.
机译:提出了一种新的基于区域的跟踪跳动心脏的方法。稀疏的统计姿势建模用于重建跳动的心脏表面上的感兴趣区域(ROI)。首先,采用高复杂度的薄板样条来预先重建一系列框架的ROI。根据稀疏的统计分析,提取来自预重建结果的ROI的3D姿态数据,以训练低复杂度模型。新的训练有素的低复杂度模型对于后续帧的ROI重建具有鲁棒性和高效性。提出的模型显着降低了适合心脏表面的多余自由度。约束项被添加到描述3D跟踪问题的目标函数中,以避免有效的二阶最小化(ESM)优化算法的错误收敛。对新提出的方法进行了评估,其中包括幻影心脏视频和达芬奇外科手术系统获得的体内视频。

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