Deep-Learning Assisted High-Resolution Binocular Stereo Depth Reconstruction - Robotics Institute Carnegie Mellon University

Deep-Learning Assisted High-Resolution Binocular Stereo Depth Reconstruction

Yaoyu Hu, Weikun Zhen, and Sebastian Scherer
Conference Paper, Proceedings of (ICRA) International Conference on Robotics and Automation, pp. 8637 - 8643, May, 2020

Abstract

This work presents dense stereo reconstruction using high-resolution images for infrastructure inspections. The state-of-the-art stereo reconstruction methods, both learning and non-learning ones, consume too much computational resource on high-resolution data. Recent learning-based methods achieve top ranks on most benchmarks. However, they suffer from the generalization issue due to lack of task-specific training data. We propose to use a less resource demanding non-learning method, guided by a learning-based model, to handle high-resolution images and achieve accurate stereo reconstruction. The deep-learning model produces an initial disparity prediction with uncertainty for each pixel of the down-sampled stereo image pair. The uncertainty serves as a self-measurement of its generalization ability and the perpixel searching range around the initially predicted disparity. The downstream process performs a modified version of the Semi-Global Block Matching method with the up-sampled perpixel searching range. The proposed deep-learning assisted method is evaluated on the Middlebury dataset and high-resolution stereo images collected by our customized binocular stereo camera. The combination of learning and non-learning methods achieves better performance on 12 out of 15 cases of the Middlebury dataset. In our infrastructure inspection experiments, the average 3D reconstruction error is less than 0.004m.

BibTeX

@conference{Hu-2020-125652,
author = {Yaoyu Hu and Weikun Zhen and Sebastian Scherer},
title = {Deep-Learning Assisted High-Resolution Binocular Stereo Depth Reconstruction},
booktitle = {Proceedings of (ICRA) International Conference on Robotics and Automation},
year = {2020},
month = {May},
pages = {8637 - 8643},
}