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Boosting Monocular Depth Estimation Models to High-Resolution via Content-Adaptive Multi-Resolution Merging

S. Mahdi H. Miangoleh, Sebastian Dille, Long Mai, Sylvain Paris, Yağız Aksoy

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Abstract

Neural networks have shown great abilities in estimating depth from a single image. However, the inferred depth maps are well below one-megapixel resolution and often lack fine-grained details, which limits their practicality. Our method builds on our analysis on how the input resolution and the scene structure affects depth estimation performance. We demonstrate that there is a trade-off between a consistent scene structure and the high-frequency details, and merge low- and high-resolution estimations to take advantage of this duality using a simple depth merging network. We present a double estimation method that improves the whole-image depth estimation and a patch selection method that adds local details to the final result. We demonstrate that by merging estimations at different resolutions with changing context, we can generate multi-megapixel depth maps with a high level of detail using a pre-trained model.

Topics & Concepts

Computer scienceMerge (version control)MonocularBoosting (machine learning)Depth mapArtificial intelligenceArtificial neural networkComputer visionHigh resolutionImage (mathematics)Pattern recognition (psychology)AlgorithmGeographyRemote sensingInformation retrievalAdvanced Vision and ImagingImage Processing Techniques and ApplicationsAdvanced Image Processing Techniques
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