CVMar 2

Affine Correspondences in Stereo Vision: Theory, Practice, and Limitations

arXiv:2603.01836v1h-index: 13
Originality Synthesis-oriented
AI Analysis

It addresses the problem of improving 3D reconstruction accuracy in computer vision, but appears incremental as it builds on existing affine transformation methods.

This paper investigates the use of affine transformations in stereo vision for applications like 3D reconstruction and surface normal estimation, finding that estimation accuracy is around a few degrees in realistic test cases.

Affine transformations have been recently used for stereo vision. They can be exploited in various computer vision application, e.g., when estimating surface normals, homographies, fundamental and essential matrices. Even full 3D reconstruction can be obtained by using affine correspondences. First, this paper overviews the fundamental statements for affine transformations and epipolar geometry. Then it is investigated how the transformation accuracy influences the quality of the 3D reconstruction. Besides, we propose novel techniques for estimating the local affine transformation from corresponding image directions; moreover, the fundamental matrix, related to the processed image pair, can also be exploited. Both synthetic and real quantitative evaluations are implemented based on the accuracy of the reconstructed surface normals. For the latter one, a special object, containing three perpendicular planes with chessboard patterns, is constructed. The quantitative evaluations are based on the accuracy of the reconstructed surface normals and it is concluded that the estimation accuracy is around a few degrees for realistic test cases. Special stereo poses and plane orientations are also evaluated in detail.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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