Light-field image super-resolution based on multi-scale feature fusion

Q3 Engineering
Z. Yuanyuan, Shi Shengxian
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引用次数: 0

Abstract

As a new generation of the imaging device, light-field camera can simultaneously capture the spatial position and incident angle of light rays. However, the recorded light-field has a trade-off between spatial resolution and angular resolution. Especially the application range of light-field cameras is restricted by the limited spatial resolution of sub-aperture images. Therefore, a light-field super-resolution neural network that fuses multi-scale features to obtain super-resolved light-field is proposed in this paper. The deep-learning-based network framework contains three major modules: multi-scale feature extraction, global feature fusion, and up-sampling. Firstly, inherent structural features in the 4D light-field are learned through the multi-scale feature extraction module, and then the fusion module is exploited for feature fusion and enhancement. Finally, the up-sampling module is used to achieve light-field super-resolution. The experimental results on the synthetic light-field dataset and real-world light-field dataset showed that this method outperforms other state-of-the-art methods in both visual and numerical evaluations. In addition, the super-resolved light-field images were applied to depth estimation in this paper, the results illustrated that the disparity map was enhanced through the light-field spatial super-resolution.
基于多尺度特征融合的光场图像超分辨率
光场相机作为新一代成像设备,可以同时捕捉光线的空间位置和入射角。然而,记录的光场需要在空间分辨率和角分辨率之间进行权衡。特别是光场相机的应用范围受到子孔径图像空间分辨率的限制。为此,本文提出了一种融合多尺度特征的光场超分辨神经网络来获得超分辨光场。基于深度学习的网络框架包含三个主要模块:多尺度特征提取、全局特征融合和上采样。首先通过多尺度特征提取模块学习四维光场的固有结构特征,然后利用融合模块进行特征融合和增强。最后,利用上采样模块实现光场超分辨率。在合成光场数据集和真实光场数据集上的实验结果表明,该方法在视觉和数值评估方面都优于其他最先进的方法。此外,本文还将超分辨光场图像应用于深度估计,结果表明,光场空间超分辨增强了视差图。
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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来源期刊
光电工程
光电工程 Engineering-Electrical and Electronic Engineering
CiteScore
2.00
自引率
0.00%
发文量
6622
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