An advanced pre-processing pipeline to improve automated photogrammetric reconstructions of architectural scenes

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Abstract

Automated image-based 3D reconstruction methods are more and more flooding our 3D modeling applications. Fully automated solutions give the impression that from a sample of randomly acquired images we can derive quite impressive visual 3D models. Although the level of automation is reaching very high standards, image quality is a fundamental pre-requisite to produce successful and photo-realistic 3D products, in particular when dealing with large datasets of images. This article presents an efficient pipeline based on color enhancement, image denoising, color-to-gray conversion and image content enrichment. The pipeline stems from an analysis of various state-of-the-art algorithms and aims to adjust the most promising methods, giving solutions to typical failure causes. The assessment evaluation proves how an effective image pre-processing, which considers the entire image dataset, can improve the automated orientation procedure and dense 3D point cloud reconstruction, even in the case of poor texture scenarios.

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APA

Gaiani, M., Remondino, F., Apollonio, F. I., & Ballabeni, A. (2016). An advanced pre-processing pipeline to improve automated photogrammetric reconstructions of architectural scenes. Remote Sensing, 8(3). https://doi.org/10.3390/rs8030178

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