A Real-time Endoscopic Image Denoising System
Yu Xing, Shishi Huang, Meng Lv, Guo Chen, Huailiang Wang, Lingzhi Sui

TL;DR
This paper presents a real-time denoising system for endoscopic images that combines traditional and learning-based methods, effectively reducing noise in images from ultra-compact sensors while maintaining detail and color fidelity.
Contribution
It introduces a comprehensive noise model for endoscopic sensors and a hybrid denoising approach that achieves real-time performance on FPGA platforms.
Findings
Significant noise reduction in endoscopic images
PSNR improved from 21.16 to 33.05
System operates in real-time on FPGA
Abstract
Endoscopes featuring a miniaturized design have significantly enhanced operational flexibility, portability, and diagnostic capability while substantially reducing the invasiveness of medical procedures. Recently, single-use endoscopes equipped with an ultra-compact analogue image sensor measuring less than 1mm x 1mm bring revolutionary advancements to medical diagnosis. They reduce the structural redundancy and large capital expenditures associated with reusable devices, eliminate the risk of patient infections caused by inadequate disinfection, and alleviate patient suffering. However, the limited photosensitive area results in reduced photon capture per pixel, requiring higher photon sensitivity settings to maintain adequate brightness. In high-contrast medical imaging scenarios, the small-sized sensor exhibits a constrained dynamic range, making it difficult to simultaneously…
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Taxonomy
TopicsImage and Signal Denoising Methods · Advanced Data Compression Techniques · Medical Image Segmentation Techniques
