首页> 外文期刊>IEEE Transactions on Ultrasonics, Ferroelectrics, and Frequency Control >Shift-invariant, DWT-based 'projection' method for estimation of ultrasound pulse power spectrum
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Shift-invariant, DWT-based 'projection' method for estimation of ultrasound pulse power spectrum

机译:基于位移不变的,基于DWT的“投影”方法估计超声脉冲功率谱

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摘要

An approach to computing estimates of the ultrasound pulse spectrum from echo-ultrasound RF sequences measured from biological tissues, is proposed. It is computed by a "projection" algorithm based on the Discrete Wavelet Transform (DWT) using averaging over a range of linear shifts. It is shown that the robust, shift invariant estimate of the ultrasound pulse power spectrum can be obtained by the projection of RF line log spectrum on an appropriately chosen subspace of L2(R) (i.e., the space of square-integrable functions) that is spanned by a redundant collection of compactly supported, scaling functions. This redundant set is formed from the traditional (in Wavelet analysis) orthogonal set of scaling functions and also by all its linear (discrete) shifts. A proof is given that the estimate, so obtained, could be viewed as the average of the orthogonal projections of the RF line log spectrum, computed for all significant linear shifts of the RIP line log spectrum in frequency domain. It implies that the estimate is shift-invariant. A computationally efficient scheme is presented for calculating the estimate. Proof is given that the averaged, shift-invariant estimate can be obtained simply by a convolution with a kernel, which can be viewed as the discretized auto-correlation function of the scaling function, appropriate to the particular subspace being considered. It implies that the computational burden is at most O(n log2 n), where n is the problem size, making the estimate quite suitable for real-time processing. Because of the property of the wavelet transform to suppress polynomials of orders lower than the number of the vanishing moments of the wavelet used, the presented approach can be considered as a local polynomial fitting. This locality plays a crucial role in the performance of the algorithm, improving the robustness of the estimation. Moreover, it is shown that the "averaging" nature of the proposed estimation allows using (relatively) poorly regular wavelets (i.e., short filters), without affecting the estimation quality. The latter is of importance whenever the number of calculations is crucial.
机译:提出了一种根据从生物组织测得的回声-超声RF序列计算超声脉冲频谱估计值的方法。它是通过基于离散小波变换(DWT)的“投影”算法,使用线性位移范围内的平均值来计算的。结果表明,可以通过在适当选择的L2(R)子空间(即平方可积函数的空间)上投影RF线对数谱来获得超声脉冲功率谱的鲁棒,不变位移估计。由紧凑支持的缩放功能的冗余集合扩展。此冗余集由缩放功能的传统正交集(在小波分析中)以及所有线性(离散)位移组成。给出的证据是,这样获得的估计值可以看作是RF线对数谱正交投影的平均值,是针对RIP线对数谱在频域中所有显着线性位移计算得出的。这意味着估计是平移不变的。提出了一种计算有效的方案来计算估计值。证明可以简单地通过与核的卷积来获得平均的平移不变估计,这可以看作是缩放函数的离散化自相关函数,适合于所考虑的特定子空间。这意味着计算负担最多为O(n log2 n),其中n是问题的大小,这使得估计值非常适合于实时处理。由于小波变换具有抑制多项式的特性,该多项式的阶数低于所用小波消失矩的数量,因此该方法可被视为局部多项式拟合。这种局部性在算法的性能中起着至关重要的作用,从而提高了估计的鲁棒性。而且,表明了所提出的估计的“平均”性质允许(相对地)使用不规则的小波(即,短滤波器),而不会影响估计质量。只要计算数量至关重要,后者就很重要。

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