基于光场信息的三维重建

Yan Zhou, Huiwen Guo, Ruiqing Fu, Guoyuan Liang, Can Wang, Xinyu Wu
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引用次数: 8

摘要

光场摄影作为计算摄影的一个重要分支,将光学系统的硬件设计与信号处理的关键算法很好地结合在一起。与传统摄影只能记录光线的二维位置不同,光场摄影系统可以记录四维的位置和方向。因此,光场摄影可以获得更多的图像信息。随着三维显示技术的发展,基于光场的自动对焦和三维显示技术越来越受到人们的关注。本文提出了一种基于光场的建筑物和办公环境三维重建新算法,该算法采用小波变换和支持向量机(SVM)模型获得图像聚焦质量评估,并结合Mean Shift算法和随机场模型获得场景深度图。首先,利用光场相机捕获光场图像。其次,利用频域数字重聚焦算法对光场图像进行处理,得到多幅不同焦距的连续重聚焦图像;再次,对每张重聚焦图像提取小波特征,然后利用基于径向基函数核的SVM模型对图像重聚焦质量进行评价;最后,利用Mean Shift算法对原始光场图像进行颜色聚类,构建带有颜色节点的马尔可夫随机场(MRF)模型。根据图像聚焦质量评估,对真实场景深度标定得到的似然深度结果进行迭代,最终重构场景深度图。实验验证了所提出的基于光场的三维重建算法的可行性。在实际数据集上的实验结果证明了该算法的良好性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
3D reconstruction based on light field information
As an important branch of computational photography, light field photography combines the hardware design of optical system with key algorithm of signal processing quite well. Unlike traditional photography which can only record light ray's two-dimensional position, light field photography system can record four-dimensional position and direction. Therefore, much more image information can be obtained from light field photography. With the development of 3D display technology, light field based autofocus and 3D display technology is becoming more and more popular. In this paper, a light field based new 3D reconstruction algorithm for buildings and office environment is proposed by applying Wavelet Transform and SVM (Support Vector Machine) model to obtain the image focusing quality assessment, along with the Mean Shift Algorithm and Random Field Model to get the depth map of the scene. Firstly, light field image is captured by using a light field camera. Secondly, we use frequency domain digital refocus algorithm to manipulate light field image and obtain several serialized refocused images with different focus. Thirdly, wavelet features are extracted from each refocused image, and then an image focusing quality assessment is conducted by using RBF (Radial Basis Function) kernel based SVM model. Finally, we use Mean Shift algorithm to realize color clustering of the original light field image, and then build MRF (Markov Random Field) Model with color nodes. By iterating the likelihood depth result obtained from real scenario depth calibrations according to image focusing quality assessment, finally the depth map of the scene is reconstructed. Experiments are conducted to prove the feasibility of the proposed 3D reconstructed algorithm based on light field. And the experimental results on real datasets demonstrate good performance of this algorithm.
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