Despite the recent progress in light field super-resolution (LFSR) achieved by convolutional neural networks, the correlation information of light field (LF) images has not been sufficiently studied and exploited due to the complexity of 4D LF data. To cope with such high-dimensional LF data, most of the existing LFSR methods resorted to decomposing it into lower dimensions and subsequently performing optimization on the decomposed sub-spaces. However, these methods are inherently limited as they neglected the characteristics of the decomposition operations and only utilized a limited set of LF sub-spaces ending up failing to comprehensively extract spatio-angular features and leading to a performance bottleneck. To overcome these limitations, in this paper, we thoroughly discover the potentials of LF decomposition and propose a novel concept of decomposition kernels. In particular, we systematically unify the decomposition operations of various sub-spaces into a series of such decomposition kernels, which are incorporated into our proposed Decomposition Kernel Network (DKNet) for comprehensive spatio-angular feature extraction. The proposed DKNet is experimentally verified to achieve substantial improvements by 1.35 dB, 0.83 dB, and 1.80 dB PSNR in 2x, 3x and 4x LFSR scales, respectively, when compared with the state-of-the-art methods. To further improve DKNet in producing more visually pleasing LFSR results, based on the VGG network, we propose a LFVGG loss to guide the Texture-Enhanced DKNet (TE-DKNet) to generate rich authentic textures and enhance LF images' visual quality significantly. We also propose an indirect evaluation metric by taking advantage of LF material recognition to objectively assess the perceptual enhancement brought by the LFVGG loss.
翻译:尽管近些年来在光场超分辨率(LFSR)方面取得了进步,但是由于4DLF数据的复杂性,光场图像的关联信息没有得到充分的研究和利用。为了应对这种高维的LF数据,大多数现有的LFSR方法都试图将LF数据分解成较低的维度,随后对分解的子空间进行优化。然而,这些方法本质上是有限的,因为它们忽视了分解操作的特性,并且仅仅利用了一组有限的LF子空间,最终未能全面提取spatio三角特征并导致一个性能瓶颈。为了克服这些限制,我们在本文中彻底发现了LF的分解潜力,并提出了一个解析内核部分的新概念。特别是,我们系统地将各种子空间的分解定位操作整合成一系列的分解内核内核内核内核内核分解内核内核内核内核内存(DKNet),我们的拟议解内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内 内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核内核