TL;DR
This paper introduces a novel dense subpixel disparity estimation algorithm for 3D road surface reconstruction, achieving high accuracy and efficiency suitable for civil engineering damage detection.
Contribution
The proposed method transforms perspective views, propagates search ranges, and refines disparities globally, offering a specialized, robust solution for road surface 3D reconstruction.
Findings
Reconstruction error ranges from 0.1 mm to 3 mm.
Algorithm operates in near real-time.
Improves accuracy over existing stereo matching methods.
Abstract
Various 3D reconstruction methods have enabled civil engineers to detect damage on a road surface. To achieve the millimetre accuracy required for road condition assessment, a disparity map with subpixel resolution needs to be used. However, none of the existing stereo matching algorithms are specially suitable for the reconstruction of the road surface. Hence in this paper, we propose a novel dense subpixel disparity estimation algorithm with high computational efficiency and robustness. This is achieved by first transforming the perspective view of the target frame into the reference view, which not only increases the accuracy of the block matching for the road surface but also improves the processing speed. The disparities are then estimated iteratively using our previously published algorithm where the search range is propagated from three estimated neighbouring disparities. Since…
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