| Literature DB >> 35610998 |
Zixin Yang1, Richard Simon2, Yangming Li3, Cristian A Linte1,2.
Abstract
In the context of Minimally Invasive Surgery, estimating depth from stereo endoscopy plays a crucial role in three-dimensional (3D) reconstruction, surgical navigation, and augmentation reality (AR) visualization. However, the challenges associated with this task are three-fold: 1) feature-less surface representations, often polluted by artifacts, pose difficulty in identifying correspondence; 2) ground truth depth is difficult to estimate; and 3) an endoscopy image acquisition accompanied by accurately calibrated camera parameters is rare, as the camera is often adjusted during an intervention. To address these difficulties, we propose an unsupervised depth estimation framework (END-flow) based on an unsupervised optical flow network trained on un-rectified binocular videos without calibrated camera parameters. The proposed END-flow architecture is compared with traditional stereo matching, self-supervised depth estimation, unsupervised optical flow, and supervised methods implemented on the Stereo Correspondence and Reconstruction of Endoscopic Data (SCARED) Challenge dataset. Experimental results show that our method outperforms several state-of-the-art techniques and achieves a close performance to that of supervised methods.Entities:
Keywords: Depth estimation; Optical flow; Self supervised learning; Stereo endoscopy; Stereo matching
Year: 2021 PMID: 35610998 PMCID: PMC9125693 DOI: 10.1007/978-3-030-80432-9_26
Source DB: PubMed Journal: Med Image Underst Anal (2021)