A Temporal Learning Approach to Inpainting Endoscopic Specularities and Its effect on Image Correspondence
Rema Daher, Francisco Vasconcelos, Danail Stoyanov

TL;DR
This paper introduces a temporal GAN-based method to inpaint and remove specular highlights from endoscopic videos, improving image quality and aiding downstream computer vision tasks like 3D reconstruction.
Contribution
It presents a novel unsupervised, temporal GAN approach for specular highlight inpainting in endoscopy, enhancing image analysis and surgical guidance.
Findings
Significant improvement over traditional methods
Positive impact on 3D reconstruction tasks
Effective generalization across different datasets
Abstract
Video streams are utilised to guide minimally-invasive surgery and diagnostic procedures in a wide range of procedures, and many computer assisted techniques have been developed to automatically analyse them. These approaches can provide additional information to the surgeon such as lesion detection, instrument navigation, or anatomy 3D shape modeling. However, the necessary image features to recognise these patterns are not always reliably detected due to the presence of irregular light patterns such as specular highlight reflections. In this paper, we aim at removing specular highlights from endoscopic videos using machine learning. We propose using a temporal generative adversarial network (GAN) to inpaint the hidden anatomy under specularities, inferring its appearance spatially and from neighbouring frames where they are not present in the same location. This is achieved using…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis · Computer Graphics and Visualization Techniques · Advanced Vision and Imaging
MethodsInpainting
