Self-supervised Light Field View Synthesis Using Cycle Consistency
Yang Chen, Martin Alain, Aljosa Smolic

TL;DR
This paper introduces a self-supervised framework for light field view synthesis that leverages cycle consistency and transfer learning from natural videos, reducing the need for large labeled light field datasets.
Contribution
It proposes a novel self-supervised approach using cycle consistency to improve light field view synthesis without extensive labeled data.
Findings
Achieves competitive performance with supervised methods
Outperforms state-of-the-art light field view synthesis techniques
Effective in generating multiple intermediate views
Abstract
High angular resolution is advantageous for practical applications of light fields. In order to enhance the angular resolution of light fields, view synthesis methods can be utilized to generate dense intermediate views from sparse light field input. Most successful view synthesis methods are learning-based approaches which require a large amount of training data paired with ground truth. However, collecting such large datasets for light fields is challenging compared to natural images or videos. To tackle this problem, we propose a self-supervised light field view synthesis framework with cycle consistency. The proposed method aims to transfer prior knowledge learned from high quality natural video datasets to the light field view synthesis task, which reduces the need for labeled light field data. A cycle consistency constraint is used to build bidirectional mapping enforcing the…
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Taxonomy
TopicsAdvanced Vision and Imaging · Advanced Image Processing Techniques · Image Enhancement Techniques
