CVGRSep 9, 2016

Learning-Based View Synthesis for Light Field Cameras

arXiv:1609.02974v1743 citations
Originality Incremental advance
AI Analysis

This work addresses a key limitation in consumer light field imaging, potentially enabling higher spatial resolution by reducing required angular sampling.

The paper tackles the trade-off between angular and spatial resolution in consumer light field cameras by using a learning-based approach to synthesize new views from a sparse set of input views, achieving superior image quality compared to state-of-the-art techniques on real-world scenes.

With the introduction of consumer light field cameras, light field imaging has recently become widespread. However, there is an inherent trade-off between the angular and spatial resolution, and thus, these cameras often sparsely sample in either spatial or angular domain. In this paper, we use machine learning to mitigate this trade-off. Specifically, we propose a novel learning-based approach to synthesize new views from a sparse set of input views. We build upon existing view synthesis techniques and break down the process into disparity and color estimation components. We use two sequential convolutional neural networks to model these two components and train both networks simultaneously by minimizing the error between the synthesized and ground truth images. We show the performance of our approach using only four corner sub-aperture views from the light fields captured by the Lytro Illum camera. Experimental results show that our approach synthesizes high-quality images that are superior to the state-of-the-art techniques on a variety of challenging real-world scenes. We believe our method could potentially decrease the required angular resolution of consumer light field cameras, which allows their spatial resolution to increase.

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