Fast Disparity Estimation from a Single Compressed Light Field Measurement

Emmanuel Martinez, Edwin Vargas, H. Arguello
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Abstract

The abundant spatial and angular information from light fields has allowed the development of multiple disparity estimation approaches. However, the acquisition of light fields requires high storage and processing cost, limiting the use of this technology in practical applications. To overcome these drawbacks, the compressive sensing (CS) theory has allowed the development of optical architectures to acquire a single coded light field measurement. This measurement is decoded using an optimization algorithm or deep neural network that requires high computational costs. The traditional approach for disparity estimation from compressed light fields requires first recovering the entire light field and then a post-processing step, thus requiring long times. In contrast, this work proposes a fast disparity estimation from a single compressed measurement by omitting the recovery step required in traditional approaches. Specifically, we propose to jointly optimize an optical architecture for acquiring a single coded light field snapshot and a convolutional neural network (CNN) for estimating the disparity maps. Experimentally, the proposed method estimates disparity maps comparable with those obtained from light fields reconstructed using deep learning approaches. Furthermore, the proposed method is 20 times faster in training and inference than the best method that estimates the disparity from reconstructed light fields.
基于单压缩光场测量的快速视差估计
光场中丰富的空间和角度信息使得多种视差估计方法得以发展。然而,光场的获取需要较高的存储和处理成本,限制了该技术在实际应用中的应用。为了克服这些缺点,压缩感知(CS)理论允许光学架构的发展,以获得单一编码光场测量。该测量使用需要高计算成本的优化算法或深度神经网络进行解码。传统的压缩光场视差估计方法需要先恢复整个光场,然后再进行后处理,耗时较长。相比之下,这项工作提出了一个快速的视差估计从一个单一的压缩测量,省略了传统方法所需的恢复步骤。具体来说,我们建议共同优化用于获取单个编码光场快照的光学架构和用于估计视差图的卷积神经网络(CNN)。在实验中,该方法估计的视差图与使用深度学习方法重建的光场得到的视差图相当。此外,该方法的训练和推理速度比最优的从重建光场估计视差的方法快20倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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