Denoising convolutional neural networks for photoacoustic microscopy
Xianlin Song, Kanggao Tang, Jianshuang Wei, Lingfang Song

TL;DR
This paper develops a feedforward denoising convolutional neural network to enhance photoacoustic microscopy images, significantly improving their signal-to-noise ratio and image quality for biomedical applications.
Contribution
It introduces a novel neural network-based denoising method specifically designed for photoacoustic microscopy images, demonstrating its effectiveness in noise reduction.
Findings
Significant increase in PSNR after denoising
Effective noise reduction in cerebrovascular images
Provides a foundation for biomedical research
Abstract
Photoacoustic imaging is a new imaging technology in recent years, which combines the advantages of high resolution and rich contrast of optical imaging with the advantages of high penetration depth of acoustic imaging. Photoacoustic imaging has been widely used in biomedical fields, such as brain imaging, tumor detection and so on. The signal-to-noise ratio (SNR) of image signals in photoacoustic imaging is generally low due to the limitation of laser pulse energy, electromagnetic interference in the external environment and system noise. In order to solve the problem of low SNR of photoacoustic images, we use feedforward denoising convolutional neural network to further process the obtained images, so as to obtain higher SNR images and improve image quality. We use Python language to manage the referenced Python external library through Anaconda, and build a feedforward noise-reducing…
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Taxonomy
TopicsPhotoacoustic and Ultrasonic Imaging · Thermography and Photoacoustic Techniques · Image Processing Techniques and Applications
