High-performance ultrasonic beamforming algorithm based on deep learning

Qiong Zhang, Yong-Jian Kuang, Zhengnan Yin
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引用次数: 0

Abstract

In this paper, a new deep neural network (DNN) ultrasonic beamformer was proposed to suppress off-axis scattering and improve image quality. The simulated channel signals from cysts and single point targets were decomposed by wavelet, and then the original signals and the features extracted by wavelet transform were combined into the input of DNN. DNN divided the input data into on-axis signals and off-axis signals, and the off-axis signals were suppressed by the network. The performance of DNN beamformer with parallel input of semantic information and ultrasonic signals was analyzed. According to the experimental results, the proposed DNN beamformer can significantly improve the CNR and CR while maintaining the SNRs.
基于深度学习的高性能超声波束形成算法
本文提出了一种新的深度神经网络(DNN)超声波束形成器,以抑制离轴散射,提高图像质量。通过小波分解囊状目标和单点目标的模拟通道信号,将原始信号和小波变换提取的特征组合成深度神经网络的输入。DNN将输入数据分为轴上信号和离轴信号,离轴信号被网络抑制。分析了语义信息与超声信号并行输入的深层神经网络波束形成器的性能。实验结果表明,所提出的DNN波束形成器在保持信噪比的前提下,显著提高了CNR和CR。
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