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基于稀疏统计姿态建模的心跳运动跟踪

Motion Tracking for Beating Heart Based on Sparse Statistic Pose Modeling.

作者信息

Yang Bo, Cao Tingting, Zheng Wenfeng, Liu Shan

出版信息

Annu Int Conf IEEE Eng Med Biol Soc. 2018 Jul;2018:1106-1110. doi: 10.1109/EMBC.2018.8512404.

Abstract

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.

摘要

提出了一种新颖的基于区域的跳动心脏跟踪方法。稀疏统计姿态建模用于重建跳动心脏表面的感兴趣区域(ROI)。首先,采用高复杂度薄板样条对一系列帧的ROI进行预重建。从预重建结果中提取ROI的3D姿态数据,以基于稀疏统计分析训练低复杂度模型。新训练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。所提出的模型显著减少了用于拟合心脏表面的冗余自由度。在描述3D跟踪问题的目标函数中添加了一个约束项,以避免高效二阶最小化(ESM)优化算法的错误收敛。在虚拟心脏视频和由达芬奇手术系统获得的体内视频上对新提出的方法进行了评估。

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