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Image denoising in acoustic field microscopy

2022-08-07 09:44:21
Shubham Kumar Gupta, Azeem Ahmad, Prakhar Kumar, Frank Melandso, Anowarul Habib

Abstract

Scanning acoustic microscopy (SAM) has been employed since microscopic images are widely used for biomedical or materials research. Acoustic imaging is an important and well-established method used in nondestructive testing (NDT), bio-medical imaging, and structural health monitoring.The imaging is frequently carried out with signals of low amplitude, which might result in leading that are noisy and lacking in details of image information. In this work, we attempted to analyze SAM images acquired from low amplitude signals and employed a block matching filter over time domain signals to obtain a denoised image. We have compared the images with conventional filters applied over time domain signals, such as the gaussian filter, median filter, wiener filter, and total variation filter. The noted outcomes are shown in this article.

Abstract (translated)

URL

https://arxiv.org/abs/2208.03688

PDF

https://arxiv.org/pdf/2208.03688.pdf


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