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An Automatic Muscle Fiber Orientation Tracking Algorithm using Bayesian Kalman Filter for Ultrasound Images

机译:一种自动肌纤维取向跟踪跟踪算法,使用贝叶斯卡尔曼滤波器超声图像滤波器

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In this study, an automatic muscle fiber orientation tracking approach based on Bayesian Kalman Filter (BKF) is proposed. The BKF employs a Gaussian mixture (GM) representation of the state and noise densities and a novel direct density simplifying algorithm for avoiding the exponential complexity growth of conventional Kalman filters (KFs) using GM. In this paper, the ultrasound image is firstly enhanced by a bank of Gabor Filters (GFs) based on the GM of the state density in BKF. Then, a bank of localized radon transforms (LRTs) are used to extract muscle fiber orientations and the dominant orientation is obtained by minimizing an energy function. Finally, the dominant orientation is fed back to the BKF as an observation. The performance of the proposed approach is compared with existing methods on five subjects over 1000+ clinical ultrasound images. Experimental results show that the proposed method can achieve accurate and robust measurements of fascicle orientation and outperforms all the existing methods.
机译:在本研究中,提出了一种基于贝叶斯卡尔曼滤波器(BKF)的自动肌肉纤维取向跟踪方法。 BKF采用高斯混合物(GM)表示状态和噪声密度和新型直接密度简化算法,用于避免使用GM的传统卡尔曼滤波器(KFS)的指数复杂性增长。在本文中,基于BKF中的状态密度的GM,通过GABOR滤波器(GFS)的银行首先增强超声图像。然后,使用一组局部氡变换(LRT)来提取肌肉纤维取向,通过最小化能量函数来获得显性取向。最后,主导取向被送回BKF作为观察。将该方法的性能与在1000多个临床超声图像中的五个受试者的现有方法进行比较。实验结果表明,该方法可以实现对雄性定位的准确且稳健的测量,优于所有现有方法。

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