Deep Learning and Conditional Random Fields-based Depth Estimation and Topographical Reconstruction from Conventional Endoscopy
Faisal Mahmood, Nicholas J. Durr

TL;DR
This paper introduces a CNN-CRF framework for depth estimation and topographical reconstruction of the colon from single endoscopy images, improving lesion detection accuracy without geometric assumptions.
Contribution
It presents a novel joint deep learning approach trained on synthetic data to accurately estimate colon surface topography from conventional endoscopy images.
Findings
Achieved a relative error of 0.152 on synthetic images and 0.242 on real images.
Successfully reconstructed colon surface topography from standard endoscopy images.
Framework can be integrated into existing endoscopy systems for enhanced lesion detection.
Abstract
Colorectal cancer is the fourth leading cause of cancer deaths worldwide and the second leading cause in the United States. The risk of colorectal cancer can be mitigated by the identification and removal of premalignant lesions through optical colonoscopy. Unfortunately, conventional colonoscopy misses more than 20% of the polyps that should be removed, due in part to poor contrast of lesion topography. Imaging tissue topography during a colonoscopy is difficult because of the size constraints of the endoscope and the deforming mucosa. Most existing methods make geometric assumptions or incorporate a priori information, which limits accuracy and sensitivity. In this paper, we present a method that avoids these restrictions, using a joint deep convolutional neural network-conditional random field (CNN-CRF) framework. Estimated depth is used to reconstruct the topography of the surface…
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Taxonomy
MethodsConditional Random Field
