School of Information and Communication Engineering, College of Electrical and Computer Engineering, Chungbuk National University, Cheongju 28644, Korea.
Electrical Engineering Department, Faculty of Engineering, Assiut University, Assiut 71515, Egypt.
Sensors (Basel). 2022 May 6;22(9):3540. doi: 10.3390/s22093540.
Light field (LF) technology has become a focus of great interest (due to its use in many applications), especially since the introduction of the consumer LF camera, which facilitated the acquisition of dense LF images. Obtaining densely sampled LF images is costly due to the trade-off between spatial and angular resolutions. Accordingly, in this research, we suggest a learning-based solution to this challenging problem, reconstructing dense, high-quality LF images. Instead of training our model with several images of the same scene, we used raw LF images (lenslet images). The raw LF format enables the encoding of several images of the same scene into one image. Consequently, it helps the network to understand and simulate the relationship between different images, resulting in higher quality images. We divided our model into two successive modules: LFR and LF augmentation (LFA). Each module is represented using a convolutional neural network-based residual network (CNN). We trained our network to lessen the absolute error between the novel and reference views. Experimental findings on real-world datasets show that our suggested method has excellent performance and superiority over state-of-the-art approaches.
光场(LF)技术已成为研究热点(因其在许多应用中的应用),特别是自推出消费级 LF 相机以来,该相机促进了密集 LF 图像的获取。由于空间和角度分辨率之间的权衡,获得密集采样的 LF 图像代价高昂。因此,在这项研究中,我们提出了一种基于学习的解决方案,用于重建密集、高质量的 LF 图像。我们没有使用同一场景的多张图像来训练我们的模型,而是使用原始 LF 图像(微透镜图像)。原始 LF 格式可将同一场景的多张图像编码到一张图像中。因此,它有助于网络理解和模拟不同图像之间的关系,从而生成更高质量的图像。我们将模型分为两个连续的模块:LFR 和 LF 增强(LFA)。每个模块都使用基于卷积神经网络的残差网络(CNN)表示。我们训练网络以减少新视图和参考视图之间的绝对误差。在真实数据集上的实验结果表明,我们提出的方法具有出色的性能和优于最先进方法的优势。