CVJul 28, 2021

Learning-Based Depth and Pose Estimation for Monocular Endoscope with Loss Generalization

arXiv:2107.13263v114 citations
Originality Incremental advance
AI Analysis

This addresses navigation and lesion localization challenges for medical practitioners in gastroendoscopy, though it is incremental as it builds on prior deep learning-based approaches.

The paper tackles the lack of 3D perception in gastroendoscopy by proposing a supervised learning approach for depth and pose estimation from monocular endoscope images, showing that their novel generalized photometric loss outperforms existing direct supervision methods.

Gastroendoscopy has been a clinical standard for diagnosing and treating conditions that affect a part of a patient's digestive system, such as the stomach. Despite the fact that gastroendoscopy has a lot of advantages for patients, there exist some challenges for practitioners, such as the lack of 3D perception, including the depth and the endoscope pose information. Such challenges make navigating the endoscope and localizing any found lesion in a digestive tract difficult. To tackle these problems, deep learning-based approaches have been proposed to provide monocular gastroendoscopy with additional yet important depth and pose information. In this paper, we propose a novel supervised approach to train depth and pose estimation networks using consecutive endoscopy images to assist the endoscope navigation in the stomach. We firstly generate real depth and pose training data using our previously proposed whole stomach 3D reconstruction pipeline to avoid poor generalization ability between computer-generated (CG) models and real data for the stomach. In addition, we propose a novel generalized photometric loss function to avoid the complicated process of finding proper weights for balancing the depth and the pose loss terms, which is required for existing direct depth and pose supervision approaches. We then experimentally show that our proposed generalized loss performs better than existing direct supervision losses.

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