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SOLD2: Self-supervised Occlusion-aware Line Description and Detection

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arxiv 2104.03362 v2 pith:O3UVGRRO submitted 2021-04-07 cs.CV

SOLD2: Self-supervised Occlusion-aware Line Description and Detection

classification cs.CV
keywords linedescriptiondetectionsegmentsapproachchangesdescriptorfeature
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Compared to feature point detection and description, detecting and matching line segments offer additional challenges. Yet, line features represent a promising complement to points for multi-view tasks. Lines are indeed well-defined by the image gradient, frequently appear even in poorly textured areas and offer robust structural cues. We thus hereby introduce the first joint detection and description of line segments in a single deep network. Thanks to a self-supervised training, our method does not require any annotated line labels and can therefore generalize to any dataset. Our detector offers repeatable and accurate localization of line segments in images, departing from the wireframe parsing approach. Leveraging the recent progresses in descriptor learning, our proposed line descriptor is highly discriminative, while remaining robust to viewpoint changes and occlusions. We evaluate our approach against previous line detection and description methods on several multi-view datasets created with homographic warps as well as real-world viewpoint changes. Our full pipeline yields higher repeatability, localization accuracy and matching metrics, and thus represents a first step to bridge the gap with learned feature points methods. Code and trained weights are available at https://github.com/cvg/SOLD2.

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