On the Comparison of Classic and Deep Keypoint Detector and Descriptor Methods

20 Jul 2020Kristijan BartolDavid BojanićTomislav PribanićTomislav PetkovićYago Diez DonosoJoaquim Salvi Mas

The purpose of this study is to give a performance comparison between several classic hand-crafted and deep key-point detector and descriptor methods. In particular, we consider the following classical algorithms: SIFT, SURF, ORB, FAST, BRISK, MSER, HARRIS, KAZE, AKAZE, AGAST, GFTT, FREAK, BRIEF and RootSIFT, where a subset of all combinations is paired into detector-descriptor pipelines... (read more)

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