用于青光眼诊断的自动三维变化检测

Lu Wang, V. Kallem, Mayank Bansal, J. Eledath, H. Sawhney, Denise J. Pearson, R. Stone
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引用次数: 3

摘要

青光眼的重要诊断标准是视神经损伤引起的视盘三维结构改变。我们提出了一种自动检测这些变化的方法,这些变化来自于同一患者在不同时间拍摄的眼底图像重建的3D模型。对于每个时段,只需要两张未经校准的眼底图像。该方法采用6点算法来估计相机的相对姿态,假设相机焦距恒定。为了解决眼底图像三维重建的不稳定性,我们的方法为每对图像保留了多个候选重建方案。在允许可能的结构变化的迭代束调整后,通过优化所有图像的3D配准来找到最佳的3D重建。通过评估图像空间中特征点的重投影误差来检测三维结构的变化。我们通过将诊断结果与人类专家在眼底图像数据集上的手动分级进行比较来验证该方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic 3D change detection for glaucoma diagnosis
Important diagnostic criteria for glaucoma are changes in the 3D structure of the optic disc due to optic nerve damage. We propose an automatic approach for detecting these changes in 3D models reconstructed from fundus images of the same patient taken at different times. For each time session, only two uncalibated fundus images are required. The approach applies a 6-point algorithm to estimate relative camera pose assuming a constant camera focal length. To deal with the instability of 3D reconstruction associated with fundus images, our approach keeps multiple candidate reconstruction solutions for each image pair. The best 3D reconstruction is found by optimizing the 3D registration of all images after an iterative bundle adjustment that tolerates possible structure changes. The 3D structure changes are detected by evaluating the reprojection errors of feature points in image space. We validate the approach by comparing the diagnosis results with manual grading by human experts on a fundus image dataset.
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