Ultrasonic image denoising using machine learning in point contact excitation and detection method
Permanent lenke
https://hdl.handle.net/10037/27666Dato
2022-09-06Type
Journal articleTidsskriftartikkel
Peer reviewed
Sammendrag
A point contact/Coulomb coupling technique is generally used for visualizing the ultrasonic waves in Lead
Zirconate Titanate (PZT) ceramics. The point contact and delta pulse excitation produce a broadband frequency
spectrum and wide directional wave vector. In ultrasonic, the signal is corrupted with several types of
noises such as speckle, Gaussian, Poisson, and salt and pepper noise. Consequently, the resolution and
quality of the images are degraded. The reliability of the health assessment of any civil or mechanical
structures highly depends on the ultrasonic signals acquired from the sensors. Recently, deep learning (DL)
has been implemented for the reduction of noises from the signals and in images. Here, we have implemented
deep learning-based convolutional autoencoders for suitable noise modeling and subsequently denoising the
ultrasonic images. Two different metrics, PSNR and SSIM are calculated for quantitative analysis of ultrasonic
images. PSNR provides higher visual interpretation, whereas the SSIM can be used to measure much finer
similarities. Based upon these parameters speckle-noise demonstrated better than other noise models.
Forlag
ElsevierSitering
Singh H, Ahmed, Melandsø F, Habib A. Ultrasonic image denoising using machine learning in point contact excitation and detection method. Ultrasonics. 2022;2023(127)Metadata
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