A Robust Edge-Preserving Stereo Matching Method for Laparoscopic Images
Published in IEEE Transactions on Medical Imaging, 2022
Recommended citation: Xia, W., Chen ECS, Pautler, SE and Peters, TM. (2022). "A Robust Edge-Preserving Stereo Matching Method for Laparoscopic Images"; in IEEE Transactions on Medical Imaging, (41)7, pp. 1651-1664 https://ieeexplore.ieee.org/document/9695464
Stereo matching has become an active area of research in the field of computer vision. In minimally invasive surgery, stereo matching provides depth information to surgeons, with the potential to increase the safety of surgical procedures, particularly those performed laparoscopically. Many stereo matching methods have been reported to perform well for natural images, but for images acquired during a laparoscopic procedure, they are limited by image characteristics including illumination differences, weak texture content, specular highlights, and occlusions. To overcome these limitations, we propose a robust edge-preserving stereo matching method for laparoscopic images, comprising an efficient sparse-dense feature matching step, left and right image illumination equalization, and refined disparity optimization. We validated the proposed method using both benchmark biological phantoms and surgical stereoscopic data. Experimental results illustrated that, in the presence of heavy illumination differences between image pairs, texture and textureless surfaces, specular highlights and occlusions, our proposed approach consistently obtains a more accurate estimate of the disparity map than state-of-the-art stereo matching methods in terms of robustness and boundary preservation.