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Research on Feature Points Extraction Method for Binary Multiscale and Rotation Invariant Local Feature Descriptor


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1 School of Electron and Information Engineering, Ningbo University of Technology, China
     

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An extreme point of scale space extraction method for binary multiscale and rotation invariant local feature descriptor is studied in this paper in order to obtain a robust and fast method for local image feature descriptor. Classic local feature description algorithms often select neighborhood information of feature points which are extremes of image scale space, obtained by constructing the image pyramid using certain signal transform method. But build the image pyramid always consumes a large amount of computing and storage resources, is not conducive to the actual applications development. This paper presents a dual multiscale FAST algorithm, it does not need to build the image pyramid, but can extract feature points of scale extreme quickly. Feature points extracted by proposed method have the characteristic of multiscale and rotation Invariant and are fit to construct the local feature descriptor.

Keywords

Features Extraction, Multiscale, Feature Descriptor, Corner Detection, Rotation Invariant.
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  • Research on Feature Points Extraction Method for Binary Multiscale and Rotation Invariant Local Feature Descriptor

Abstract Views: 228  |  PDF Views: 0

Authors

Hongwei Ying
School of Electron and Information Engineering, Ningbo University of Technology, China
Jiatao Song
School of Electron and Information Engineering, Ningbo University of Technology, China
Jinhe Wang
School of Electron and Information Engineering, Ningbo University of Technology, China
Xuena Qiu
School of Electron and Information Engineering, Ningbo University of Technology, China
Wang Wei
School of Electron and Information Engineering, Ningbo University of Technology, China
Zhongxiu Yang
School of Electron and Information Engineering, Ningbo University of Technology, China

Abstract


An extreme point of scale space extraction method for binary multiscale and rotation invariant local feature descriptor is studied in this paper in order to obtain a robust and fast method for local image feature descriptor. Classic local feature description algorithms often select neighborhood information of feature points which are extremes of image scale space, obtained by constructing the image pyramid using certain signal transform method. But build the image pyramid always consumes a large amount of computing and storage resources, is not conducive to the actual applications development. This paper presents a dual multiscale FAST algorithm, it does not need to build the image pyramid, but can extract feature points of scale extreme quickly. Feature points extracted by proposed method have the characteristic of multiscale and rotation Invariant and are fit to construct the local feature descriptor.

Keywords


Features Extraction, Multiscale, Feature Descriptor, Corner Detection, Rotation Invariant.