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首页> 外文期刊>IEEE Transactions on Ultrasonics, Ferroelectrics, and Frequency Control >Direct comparison of feature tracking and autocorrelation for velocity estimation
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Direct comparison of feature tracking and autocorrelation for velocity estimation

机译:直接比较特征跟踪和自相关以进行速度估计

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Feature tracking is an algorithm for estimating tissue motion and blood flow using pulse-echo ultrasound. It was proposed as a computationally simpler alternative to other techniques such as autocorrelation and time-domain cross correlation. The advantage of feature tracking is that it selectively extracts easily identifiable parts of the speckle signal (e.g., the local maxima), reducing the amount of information being processed. Studies on feature tracking to date have used stationary, speckle-generating targets to simulate blood flow. Also, feature tracking has not been compared with accepted commercial methods. This study directly compares feature tracking performance with the complex autocorrelation method, which is the most common color flow algorithm. Experiments were performed with both a rotating string phantom and a commercial flow phantom surrounded by tissue-mimicking material, using 2.25 MHz and 3.5 MHz transducers, under more realistic signal-to-clutter (-15 to -35 dB) and signal-to-noise ratios (SNR) (15 dB to 3 dB) than previous translating-phantom tests. The feature tracking approach is shown to produce mean estimates comparable to autocorrelation (R2 = 0.9954 and 0.9960 for 6-sample and 12-sample autocorrelation, respectively, and R2 = 0.9998 for both 6-sample and 12-sample feature tracking) for velocities ranging from 10 to 100 cm/s. The variance of feature-tracking estimates is shown to compare favorably to the complex autocorrelation approach using the same number of ensemble flow samples (19 to 28% lower standard deviation for 3.5 MHz, 36 to 55% lower standard deviation for 2.25 MHz). However, linear regression of the feature locations does not produce an appreciable improvement in estimation variance. Discussion of the need for further research, particularly in the areas of feature detection and feature correspondence, is given
机译:特征跟踪是一种使用脉冲回波超声估算组织运动和血流的算法。它被提议作为其他技术(例如自相关和时域互相关)在计算上更简单的替代方案。特征跟踪的优点是它选择性地提取散斑信号的容易识别的部分(例如局部最大值),从而减少了要处理的信息量。迄今为止,有关特征跟踪的研究已使用固定的,产生斑点的目标来模拟血流。而且,没有将特征跟踪与公认的商业方法进行比较。本研究将特征跟踪性能与最常见的颜色流算法复杂的自相关方法进行了直接比较。在更逼真的信噪比(-15至-35 dB)和信噪比下,使用2.25 MHz和3.5 MHz换能器对由组织模仿材料包围的旋转弦乐幻影和商用流动幻影进行了实验。噪声比(SNR)(15 dB至3 dB),比以前的平移幻象测试高。对于速度范围,特征跟踪方法显示出可产生与自相关相当的平均估计值(6样本和12样本自相关的R2 = 0.9954和0.9960,6样本和12样本特征跟踪的R2 = 0.9998)从10到100 cm / s。结果表明,特征跟踪估计值的方差可以与使用相同数量的整体流样本的复杂自相关方法(在3.5 MHz下标准偏差降低19%至28%,在2.25 MHz下标准偏差降低36%至55%)进行比较。但是,特征位置的线性回归不会在估计方差上产生明显的改善。讨论了进一步研究的必要性,特别是在特征检测和特征对应方面

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