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首页> 外文期刊>Annals of Biomedical Engineering: The Journal of the Biomedical Engineering Society >MUlti-Dimensional Spline-Based Estimator (MUSE) for motion estimation: algorithm development and initial results.
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MUlti-Dimensional Spline-Based Estimator (MUSE) for motion estimation: algorithm development and initial results.

机译:用于运动估计的基于多维度样条的估计器(MUSE):算法开发和初始结果。

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Image registration and motion estimation play central roles in many fields, including RADAR, SONAR, light microscopy, and medical imaging. Because of its central significance, estimator accuracy, precision, and computational cost are of critical importance. We have previously presented a highly accurate, spline-based time delay estimator that directly determines sub-sample time delay estimates from sampled data. The algorithm uses cubic splines to produce a continuous representation of a reference signal and then computes an analytical matching function between this reference and a delayed signal. The location of the minima of this function yields estimates of the time delay. In this paper we describe the MUlti-dimensional Spline-based Estimator (MUSE) that allows accurate and precise estimation of multi-dimensional displacements/strain components from multi-dimensional data sets. We describe the mathematical formulation for two- and three-dimensional motion/strain estimation and present simulation results to assess the intrinsic bias and standard deviation of this algorithm and compare it to currently available multi-dimensional estimators. In 1000 noise-free simulations of ultrasound data we found that 2D MUSE exhibits maximum bias of 2.6 x 10(-4) samples in range and 2.2 x 10(-3) samples in azimuth (corresponding to 4.8 and 297 nm, respectively). The maximum simulated standard deviation of estimates in both dimensions was comparable at roughly 2.8 x 10(-3) samples (corresponding to 54 nm axially and 378 nm laterally). These results are between two and three orders of magnitude better than currently used 2D tracking methods. Simulation of performance in 3D yielded similar results to those observed in 2D. We also present experimental results obtained using 2D MUSE on data acquired by an Ultrasonix Sonix RP imaging system with an L14-5/38 linear array transducer operating at 6.6 MHz. While our validation of the algorithm was performed using ultrasound data, MUSE is broadly applicable across imaging applications.
机译:图像配准和运动估计在许多领域(包括雷达,声纳,光学显微镜和医学成像)中发挥着核心作用。由于其中心意义,估计器的准确性,精度和计算成本至关重要。先前我们已经提出了一种高度精确的,基于样条的时间延迟估计器,该估计器可以直接从采样数据中确定子采样时间延迟估计。该算法使用三次样条生成参考信号的连续表示,然后计算该参考信号与延迟信号之间的解析匹配函数。此函数最小值的位置可得出时间延迟的估计值。在本文中,我们描述了基于MUlti-维样条的估计器(MUSE),该估计器可以从多维数据集中准确,精确地估计多维位移/应变分量。我们描述了二维和三维运动/应变估计的数学公式,并给出了仿真结果,以评估该算法的固有偏差和标准偏差,并将其与当前可用的多维估计器进行比较。在1000次无噪声的超声数据模拟中,我们发现2D MUSE的最大偏斜范围为2.6 x 10(-4)样品,方位角为2.2 x 10(-3)样品(分别对应于4.8和297 nm)。在大约2.8 x 10(-3)的样本中,这两个维度的估计值的最大模拟标准差相当(轴向对应于54 nm,横向对应于378 nm)。这些结果比目前使用的2D跟踪方法好2到3个数量级。在3D模式下对性能进行仿真得出的结果与在2D模式下观察到的结果相似。我们还介绍了使用2D MUSE获得的实验结果,这些数据是通过Ultrasonix Sonix RP成像系统与L14-5 / 38线性阵列换能器在6.6 MHz下运行获得的。尽管我们使用超声波数据对算法进行了验证,但MUSE广泛适用于成像应用。

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