Home /Research /SSIS-Seg: Simulation-Supervised Image Synthesis for Surgical Instrument Segmentation
SURGICAL

SSIS-Seg: Simulation-Supervised Image Synthesis for Surgical Instrument Segmentation

Emanuele Colleoni, Dimitrios Psychogyios, Beatrice van Amsterdam, Francisco Vasconcelos, Danail Stoyanov

Year
2022
Citations
22

Abstract

Surgical instrument segmentation can be used in a range of computer assisted interventions and automation in surgical robotics. While deep learning architectures have rapidly advanced the robustness and performance of segmentation models, most are still reliant on supervision and large quantities of labelled data. In this paper, we present a novel method for surgical image generation that can fuse robotic instrument simulation and recent domain adaptation techniques to synthesize artificial surgical images to train surgical instrument segmentation models. We integrate attention modules into well established image generation pipelines and propose a novel cost function to support supervision from simulation frames in model training. We provide an extensive evaluation of our method in terms of segmentation performance along with a validation study on image quality using evaluation metrics. Additionally, we release a novel segmentation dataset from real surgeries that will be shared for research purposes. Both binary and semantic segmentation have been considered, and we show the capability of our synthetic images to train segmentation models compared with the latest methods from the literature.

Keywords

Computer scienceSegmentationArtificial intelligenceImage segmentationRobustness (evolution)Computer visionAutomationRoboticsSegmentation-based object categorizationScale-space segmentation

Related papers

Browse all SURGICAL papers