基于超过景深的多视点三维重建误差的逐像素标定

Rong Dai;Wenpan Li;Yun-Hui Liu
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引用次数: 0

摘要

在三维显微成像中,在严重散焦的情况下,极浅的景深对准确的三维重建提出了挑战。传统的标定方法依赖于特征点的空间提取,建立空间三维信息作为优化目标。然而,在离焦条件下,这些方法的提取精度会降低,从而导致校准性能的下降。为了在不影响散焦场景精度的情况下扩展校准量,我们提出了一种基于多视图3D重建误差的逐像素校准方法。它利用不同双目设置之间的三维重建误差作为优化目标。本文首先利用远心透镜的多视角显微三维测量系统,分析了低精度光学模型下的多视角三维重建误差分布。随后,提出了用于实现基于误差的逐像素校准的三维比例模型,该模型导出为与三维重建误差分布直接相关的空间线性表达式。实验结果证实了该方法在多个双目设置下的鲁棒收敛性。在聚焦体积附近,多视图三维重建误差保持在约$8~ $ mu $ m(小于0.5相机像素间距),绝对精度保持在测量范围的0.5%以内。超过10倍的景深,多视图3D重建误差增加到约$30~\mu $ m(仍小于2个相机像素间距),而绝对精度保持在测量范围的1%以内。这些高精度测量结果验证了我们所提出的校准方法的可行性和准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Per-Pixel Calibration Based on Multi-View 3D Reconstruction Errors Beyond the Depth of Field
In 3D microscopic imaging, the extremely shallow depth of field presents a challenge for accurate 3D reconstruction in cases of significant defocus. Traditional calibration methods rely on the spatial extraction of feature points to establish spatial 3D information as the optimization objective. However, these methods suffer from reduced extraction accuracy under defocus conditions, which causes degradation of calibration performance. To extend calibration volume without compromising accuracy in defocused scenarios, we propose a per-pixel calibration based on multi-view 3D reconstruction errors. It utilizes 3D reconstruction errors among different binocular setups as an optimization objective. We first analyze multi-view 3D reconstruction error distributions under the poor-accuracy optical model by employing a multi-view microscopic 3D measurement system using telecentric lenses. Subsequently, the 3D proportion model is proposed for implementing our error-based per-pixel calibration, derived as a spatial linear expression directly correlated with the 3D reconstruction error distribution. The experimental results confirm the robust convergence of our method with multiple binocular setups. Near the focus volume, the multi-view 3D reconstruction error remains approximately $8~\mu $ m (less than 0.5 camera pixel pitch), with absolute accuracy maintained within 0.5% of the measurement range. Beyond tenfold depth of field, the multi-view 3D reconstruction error increases to around $30~\mu $ m (still less than 2 camera pixel pitches), while absolute accuracy remains within 1% of the measurement range. These high-precision measurement results validate the feasibility and accuracy of our proposed calibration.
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