| Literature DB >> 36148137 |
Baoru Huang1,2, Anh Nguyen1,3, Siyao Wang1, Ziyang Wang4, Erik Mayer2, David Tuch5, Kunal Vyas5, Stamatia Giannarou1,2, Daniel S Elson1,2.
Abstract
Surgical instrument segmentation and depth estimation are crucial steps to improve autonomy in robotic surgery. Most recent works treat these problems separately, making the deployment challenging. In this paper, we propose a unified framework for depth estimation and surgical tool segmentation in laparoscopic images. The network has an encoder-decoder architecture and comprises two branches for simultaneously performing depth estimation and segmentation. To train the network end to end, we propose a new multi-task loss function that effectively learns to estimate depth in an unsupervised manner, while requiring only semi-ground truth for surgical tool segmentation. We conducted extensive experiments on different datasets to validate these findings. The results showed that the end-to-end network successfully improved the state-of-the-art for both tasks while reducing the complexity during their deployment.Entities:
Keywords: Deep learning; Multi-task learning; Self-supervised depth estimation; Surgical instrument segmentation
Year: 2022 PMID: 36148137 PMCID: PMC7613616 DOI: 10.1109/TMRB.2022.3170215
Source DB: PubMed Journal: IEEE Trans Med Robot Bionics ISSN: 2576-3202