Texture-enhanced Light Field Super-resolution with Spatio-Angular Decomposition Kernels
Zexi Hu, Xiaoming Chen, Henry Wing Fung Yeung, Yuk Ying Chung, Zhibo, Chen

TL;DR
This paper introduces a novel decomposition kernel approach within a deep network to improve light field super-resolution by better capturing spatio-angular features, and enhances visual quality with a texture-focused loss.
Contribution
It proposes a unified decomposition kernel framework and a texture-enhanced loss for superior light field super-resolution performance.
Findings
Achieved significant improvements over state-of-the-art methods.
Enhanced visual quality with authentic textures using LFVGG loss.
Proposed an indirect metric for perceptual quality assessment.
Abstract
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 sufficiently extract spatio-angular features and leading to a performance bottleneck. To overcome these limitations, in this paper, we comprehensively discover the potentials of LF decomposition and propose a novel concept of decomposition kernels. In particular,…
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Taxonomy
TopicsAdvanced Vision and Imaging · Advanced Image Processing Techniques · Advanced Fluorescence Microscopy Techniques
MethodsMax Pooling · Dropout · Dense Connections · Convolution · Softmax
