Deep learning-based denoising of acoustic images generated with point contact method

IF 2 Q2 ENGINEERING, MULTIDISCIPLINARY
Suyog Jadhav, Ravali Kuchibhotla, Krishna Agarwal, A. Habib, Dilip K. Prasad
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引用次数: 1

Abstract

The versatile nature of ultrasound imaging finds applications in various fields. A point contact excitation and detection method is generally used for visualizing the acoustic waves in Lead Zirconate Titanate (PZT) ceramics. Such an excitation method with a delta pulse generates a broadband frequency spectrum and wide directional wave vector. The presence of noise in the ultrasonic signals severely degrades the resolution and image quality. Deep learning-based signal and image denoising has been demonstrated recently. This paper bench-marked and compared several state-of-the-art deep learning image denoising methods with the classical denoising methods. The best-performing deep learning models are observed to be performing at par or, in some cases, even better than the classical methods on ultrasonic images. We further demonstrate the effectiveness and versatility of the deep learning-based denoising model for the unexplored domain of ultrasound/ultrasonic data. We conclude with a discussion on selecting the best method for denoising ultrasonic images. The impact of this work may help ultrasound-based defects identification equipment manufacturers to adopt a deep learning-based denoising model for more wider and versatile use.
基于深度学习的点接触声图像去噪
超声成像的多用途特性在各个领域都有应用。对于锆钛酸铅(PZT)陶瓷中的声波,一般采用点接触激发检测方法。这种具有δ脉冲的激励方法产生宽带频谱和宽定向波矢量。超声信号中噪声的存在严重降低了图像的分辨率和质量。基于深度学习的信号和图像去噪最近得到了证明。本文对几种最先进的深度学习图像去噪方法与经典去噪方法进行了基准测试和比较。据观察,表现最好的深度学习模型在超声图像上的表现与传统方法相当,在某些情况下甚至比传统方法更好。我们进一步证明了基于深度学习的超声/超声数据去噪模型在未探索领域的有效性和通用性。最后讨论了超声图像去噪方法的选择问题。这项工作的影响可能有助于基于超声波的缺陷识别设备制造商采用基于深度学习的去噪模型,以获得更广泛和通用的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
3.80
自引率
9.10%
发文量
25
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