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Computer vision / Feature detection / Artificial intelligence / Computational neuroscience / Scale-invariant feature transform / Structure from motion / Conference on Computer Vision and Pattern Recognition / Convolutional neural network / Speeded up robust features / Spatial verification / Artificial neural network / Random sample consensus
Date: 2018-05-31 10:21:04
Computer vision
Feature detection
Artificial intelligence
Computational neuroscience
Scale-invariant feature transform
Structure from motion
Conference on Computer Vision and Pattern Recognition
Convolutional neural network
Speeded up robust features
Spatial verification
Artificial neural network
Random sample consensus

Structure-from-Motion using Dense CNN Features with Keypoint Relocalization

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