Image inpainting in acoustic microscopy
Permanent link
https://hdl.handle.net/10037/30576Date
2023-04-27Type
Journal articleTidsskriftartikkel
Peer reviewed
Author
Habib, Anowarul; Banerjee, Pragyan; Mishra, Sibasish; Yadav, Nitin; Agarwal, Krishna; Melandsø, Frank; Prasad, Dilip KAbstract
Scanning acoustic microscopy (SAM) is a non-ionizing and label-free imaging modality used to visualize the surface and internal structures
of industrial objects and biological specimens. The image of the sample under investigation is created using high-frequency acoustic waves.
The frequency of the excitation signals, the signal-to-noise ratio, and the pixel size all play a role in acoustic image resolution. We propose a
deep learning-enabled image inpainting for acoustic microscopy in this paper. The method is based on training various generative adversarial
networks (GANs) to inpaint holes in the original image and generate a 4× image from it. In this approach, five different types of GAN models
are used: AOTGAN, DeepFillv2, Edge-Connect, DMFN, and Hypergraphs image inpainting. The trained model’s performance is assessed
by calculating the peak signal-to-noise ratio (PSNR) and structural similarity index measure (SSIM) between network-predicted and ground
truth images. The Hypergraphs image inpainting model provided an average SSIM of 0.93 for 2× and up to 0.93 for the final 4×, respectively,
and a PSNR of 32.33 for 2× and up to 32.20 for the final 4×. The developed SAM and GAN frameworks can be used in a variety of industrial
applications, including bio-imaging.
Publisher
AIP PublishingCitation
Habib A, Banerjee, Mishra, Yadav N, Agarwal K, Melandsø F, Prasad. Image inpainting in acoustic microscopy. AIP Advances. 2023;13(4)Metadata
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