CVJan 29, 2022

Light field Rectification based on relative pose estimation

arXiv:2201.12533v1
Originality Incremental advance
AI Analysis

This work addresses a domain-specific problem for computer vision applications like 3D scene reconstruction, offering an incremental improvement over existing methods.

The paper tackles the problem of ultra-small baseline in hand-held light field cameras, which limits depth resolution in 3D reconstruction, by proposing a rectification method that aligns two light fields to achieve a large baseline, resulting in significantly improved depth resolution.

Hand-held light field (LF) cameras have unique advantages in computer vision such as 3D scene reconstruction and depth estimation. However, the related applications are limited by the ultra-small baseline, e.g., leading to the extremely low depth resolution in reconstruction. To solve this problem, we propose to rectify LF to obtain a large baseline. Specifically, the proposed method aligns two LFs captured by two hand-held LF cameras with a random relative pose, and extracts the corresponding row-aligned sub-aperture images (SAIs) to obtain an LF with a large baseline. For an accurate rectification, a method for pose estimation is also proposed, where the relative rotation and translation between the two LF cameras are estimated. The proposed pose estimation minimizes the degree of freedom (DoF) in the LF-point-LF-point correspondence model and explicitly solves this model in a linear way. The proposed pose estimation outperforms the state-of-the-art algorithms by providing more accurate results to support rectification. The significantly improved depth resolution in 3D reconstruction demonstrates the effectiveness of the proposed LF rectification.

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