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Multi-Scale Structural-aware Exposure Correction for Endoscopic Imaging

Axel García-Vega, Ricardo Espinosa, Luis Ramírez-Guzmán, Thomas Bazin, Luis Falcón-Morales, Gilberto Ochoa‐Ruiz, Dominique Lamarque, Christian Daul

202312 citationsDOI

Abstract

Endoscopy is the most widely imaging technique used for the diagnosis of cancerous lesions in hollow organs. However, endoscopic images are often affected by illumination artefacts: image parts may be over- or underexposed according to the light source pose and the tissue orientation. These artifacts have a strong negative impact on the performance of computer vision or artificial intelligence based diagnosis tools. Although endoscopic image enhancement methods are greatly required, little effort has been devoted to over- and underexposure enhancement in real-time. This contribution presents an extension to the objective function of LMSPEC, a method originally introduced to enhance images from natural scenes. It is used here for the exposure correction in endoscopic imaging and the preservation of structural information. To the best of our knowledge, this contribution is the first one that addresses the enhancement of both types of endoscopic artefacts (under- and over-exposure) using deep learning methods. Tested on the Endo4IE dataset, the proposed implementation has yielded a significant improvement over LMSPEC reaching a SSIM increase of 4.40% and 4.21% for over- and underexposed images, respectively.

Topics & Concepts

Artificial intelligenceComputer scienceComputer visionOrientation (vector space)EndoscopyImage (mathematics)Image enhancementRadiologyMedicineMathematicsGeometryImage Enhancement TechniquesEsophageal Cancer Research and TreatmentImage and Signal Denoising Methods
Multi-Scale Structural-aware Exposure Correction for Endoscopic Imaging | Litcius