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Harris affine region detector / GLOH / 3D single object recognition / Maximally stable extremal regions / Hessian affine region detector / Object recognition / Feature / Scale space / Affine shape adaptation / Computer vision / Image processing / Scale-invariant feature transform
Harris affine region detector
GLOH
3D single object recognition
Maximally stable extremal regions
Hessian affine region detector
Object recognition
Feature
Scale space
Affine shape adaptation
Computer vision
Image processing
Scale-invariant feature transform

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