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Du et al., 2020 - Google Patents

SPOT: Selective point cloud voting for better proposal in point cloud object detection

Du et al., 2020

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Document ID
5112205501217137405
Author
Du H
Li L
Liu B
Vasconcelos N
Publication year
Publication venue
European Conference on Computer Vision

External Links

Snippet

The sparsity of point clouds limits deep learning models on capturing long-range dependencies, which makes features extracted by the models ambiguous. In point cloud object detection, ambiguous features make it hard for detectors to locate object centers (Fig.) …
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Classifications

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