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GeoDesc: Learning Local Descriptors by Integrating Geometry Constraints

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Learned local descriptors based on Convolutional Neural Networks (CNNs) have achieved significant improvements on patch-based benchmarks, whereas not having demonstrated strong generalization ability on recent benchmarks of image-based 3D reconstruction. In this paper, we mitigate this limitation by proposing a novel local descriptor learning approach that integrates geometry constraints from multi-view reconstructions, which benefits the learning process in terms of data generation, data sampling and loss computation. We refer to the proposed descriptor as GeoDesc, and demonstrate its superior performance on various large-scale benchmarks, and in particular show its great success on challenging reconstruction tasks. Moreover, we provide guidelines towards practical integration of learned descriptors in Structure-from-Motion (SfM) pipelines, showing the good trade-off that GeoDesc delivers to 3D reconstruction tasks between accuracy and efficiency.

Zixin Luo, Tianwei Shen, Lei Zhou, Siyu Zhu, Runze Zhang, Yao Yao, Tian Fang, Long Quan• 2018

Related benchmarks

TaskDatasetResultRank
3D ReconstructionMadrid Metropolis
Reg Images Count495
11
Sparse 3D ReconstructionETH Local Feature Benchmark Gendarmenmarkt v1.0--
8
3D ReconstructionTower of London 1576 images
Reg Images Count776
4
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