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arxiv: 1803.08407 · v3 · pith:IISUK2OHnew · submitted 2018-03-22 · 💻 cs.CV

PlaneMatch: Patch Coplanarity Prediction for Robust RGB-D Reconstruction

classification 💻 cs.CV
keywords coplanarityreconstructioncoplanardescriptormethodpatchrgb-dfind
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We introduce a novel RGB-D patch descriptor designed for detecting coplanar surfaces in SLAM reconstruction. The core of our method is a deep convolutional neural net that takes in RGB, depth, and normal information of a planar patch in an image and outputs a descriptor that can be used to find coplanar patches from other images.We train the network on 10 million triplets of coplanar and non-coplanar patches, and evaluate on a new coplanarity benchmark created from commodity RGB-D scans. Experiments show that our learned descriptor outperforms alternatives extended for this new task by a significant margin. In addition, we demonstrate the benefits of coplanarity matching in a robust RGBD reconstruction formulation.We find that coplanarity constraints detected with our method are sufficient to get reconstruction results comparable to state-of-the-art frameworks on most scenes, but outperform other methods on standard benchmarks when combined with a simple keypoint method.

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