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首页> 外文期刊>IEEE Transactions on Ultrasonics, Ferroelectrics, and Frequency Control >The Use of Binary Quantization for the Acquisition of Low SNR Ultrasonic Signals: A Study of the Input Dynamic Range
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The Use of Binary Quantization for the Acquisition of Low SNR Ultrasonic Signals: A Study of the Input Dynamic Range

机译:二进制量化在低SNR超声信号采集中的应用:输入动态范围的研究

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摘要

Low-power excitation and/or low sensitivity transducers, such as electromagnetic acoustic transducers, piezoelectric paints, air-coupled transducers, and small elements of dense arrays, may produce signals below the noise threshold at the receiver. The information from those noisy signals can be recovered after averaging or pulse compression using binary (1-b) quantization only without experiencing significant losses. Hence, no analog-to-digital converter is required, which reduces the data throughput and makes the electronics faster, more compact, and energy efficient. All these are especially attractive for applications that require arrays with many channels and high sampling rates, where the sampling rate can be as high as the system clock. In this paper, the theory of binary quantization is reviewed, mainly from previous work on wireless sensor networks, and the signal-to-noise ratio (SNR) of the input signals under which binary quantization is of practical interest for ultrasound applications is investigated. The main findings are that in most practical cases binary quantization can be used with small errors when the input SNR is on the order of 8 dB or less. Moreover, the maximum SNR after binary quantization and averaging can be estimated as 10 log10 N - 2 dB, where N is the number of averages.
机译:低功率激励和/或低灵敏度换能器,例如电磁声换能器,压电涂料,空气耦合换能器以及密集阵列的小元件,可能会在接收器处产生低于噪声阈值的信号。这些噪声信号中的信息仅在使用二进制(1-b)量化进行平均或脉冲压缩后才能恢复,而不会遭受重大损失。因此,不需要模数转换器,这减少了数据吞吐量,并使电子设备更快,更紧凑且更节能。所有这些对于要求具有许多通道和高采样率的阵列的应用特别有吸引力,其中采样率可能与系统时钟一样高。在本文中,主要从先前在无线传感器网络上的工作回顾了二进制量化的理论,并研究了二进制量化对于超声应用具有实际意义的输入信号的信噪比(SNR)。主要发现是,在大多数实际情况下,当输入SNR等于或小于8 dB时,二进制量化可以有很小的误差。此外,二进制量化和平均后的最大SNR可以估计为10 log10 N-2 dB,其中N是平均值。

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