Litcius/Paper detail

Self-Supervised Monocular Depth Estimation With 3-D Displacement Module for Laparoscopic Images

Chi Xu, Baoru Huang, Daniel S. Elson

2022IEEE Transactions on Medical Robotics and Bionics20 citationsDOIOpen Access PDF

Abstract

We present a novel self-supervised training framework with 3D displacement (3DD) module for accurately estimating per-pixel depth maps from single laparoscopic images. Recently, several self-supervised learning based monocular depth estimation models have achieved good results on the KITTI dataset, under the hypothesis that the camera is dynamic and the objects are stationary, however this hypothesis is often reversed in the surgical setting (laparoscope is stationary, the surgical instruments and tissues are dynamic). Therefore, a 3DD module is proposed to establish the relation between frames instead of ego-motion estimation. In the 3DD module, a convolutional neural network (CNN) analyses source and target frames to predict the 3D displacement of a 3D point cloud from a target frame to a source frame in the coordinates of the camera. Since it is difficult to constrain the depth displacement from two 2D images, a novel depth consistency module is proposed to maintain depth consistency between displacement-updated depth and model-estimated depth to constrain 3D displacement effectively. Our proposed method achieves remarkable performance for monocular depth estimation on the Hamlyn surgical dataset and acquired ground truth depth maps, outperforming monodepth, monodepth2 and packnet models.

Topics & Concepts

Artificial intelligenceDisplacement (psychology)Computer visionComputer scienceConsistency (knowledge bases)Frame (networking)MonocularConvolutional neural networkPixelGround truthPoint cloudPsychologyTelecommunicationsPsychotherapistAdvanced Vision and ImagingImage Processing Techniques and ApplicationsRobotics and Sensor-Based Localization