Real-time Dense Reconstruction of Tissue Surface from Stereo Optical Video
Haoyin Zhou, Jagadeesan Jayender

TL;DR
This paper presents a real-time method for dense 3D tissue surface reconstruction from stereo videos, combining stereo matching, mosaicking, and robust SLAM algorithms to handle low texture and illumination variations.
Contribution
It introduces a novel real-time pipeline integrating stereo matching, feature-based SLAM, and GPU acceleration for high-resolution tissue surface reconstruction.
Findings
Reconstructed 3D models with less than 2 mm accuracy.
Average processing time of 76.3 ms per key frame.
Effective handling of low texture and illumination changes.
Abstract
We propose an approach to reconstruct dense three-dimensional (3D) model of tissue surface from stereo optical videos in real-time, the basic idea of which is to first extract 3D information from video frames by using stereo matching, and then to mosaic the reconstructed 3D models. To handle the common low texture regions on tissue surfaces, we propose effective post-processing steps for the local stereo matching method to enlarge the radius of constraint, which include outliers removal, hole filling and smoothing. Since the tissue models obtained by stereo matching are limited to the field of view of the imaging modality, we propose a model mosaicking method by using a novel feature-based simultaneously localization and mapping (SLAM) method to align the models. Low texture regions and the varying illumination condition may lead to a large percentage of feature matching outliers. To…
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Taxonomy
TopicsAdvanced Vision and Imaging · Robotics and Sensor-Based Localization · Advanced Image and Video Retrieval Techniques
