Rotation-Invariant Fast Features for Large-Scale Recognition
نویسندگان
چکیده
We present an end-to-end feature description pipeline which uses a novel interest point detector and RotationInvariant Fast Feature (RIFF) descriptors. The proposed RIFF algorithm is 15× faster than SURF while producing large-scale retrieval results that are comparable to SIFT. Such high-speed features benefit a range of applications from Mobile Augmented Reality (MAR) to web-scale image retrieval and analysis.
منابع مشابه
Rotation-invariant fast features for large-scale recognition and real-time tracking
We present an end-to-end feature description pipeline which uses a novel interest point detector and rotation-invariant fast feature (RIFF) descriptors. The proposed RIFF algorithm is 15 faster than SURF [1] while producing large-scale retrieval results that are comparable to SIFT [2]. Such high-speed features benefit a range of applications from mobile augmented reality (MAR) to web-scale imag...
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