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A review of object representation based on local features
  • ISSN号:1869-1951
  • 期刊名称:Journal of Zhejiang University-Science C(Computers
  • 时间:2013.7
  • 页码:495-504
  • 分类:TP391.41[自动化与计算机技术—计算机应用技术;自动化与计算机技术—计算机科学与技术]
  • 作者机构:[1]College of Computer and Information Engineering, Beijing Technology and Business University, China Beijing 100048, [2]School of Computer Science, BeiJing University of Posts and Telecommunications, China BeiJing 100876I
  • 相关基金:Project supported by the National Basic Research Program (973) of China (No. 2012CB821206), the National Natural Science Foundation of China (No. 71201004), the Scientific Research Common Program of Beijing Municipal Commission of Education (No. KM201310011009), and the Funding Project for Innovation on Science, Technology and Graduate Education in Institutions of Higher Learning under the Jurisdiction of Bcijing Municipality (Nos. PXM2012 014213 000037 and PXM2012 014213 000079)
  • 相关项目:面向大数据的一致性分类及应用研究
中文摘要:

Object representation based on local features is a topical subject in the domain of image understanding and computer vision. We discuss the defects of global features in present methods and the advantages of local features in object recognition, and briefly explore state-of-the-art recognition methods using local features, especially the main approaches of local feature extraction and object representation. To clearly explain these methods, the problem of local feature extraction is divided into feature region detection, feature region description, and feature space optimization. The main components and merits of these steps are presented. Technologies for object presentation are classified into three types: vector space, sliding window, and structure relationship models. Future development trends are discussed briefly.

英文摘要:

Object representation based on local features is a topical subject in the domain of image understanding and computer vision. We discuss the defects of global features in present methods and the advantages of local features in object recognition, and briefly explore state-of-the-art recognition methods using local features, especially the main approaches of local feature extraction and object representation. To clearly explain these methods, the problem of local feature extraction is divided into feature region detection, feature region description, and feature space optimization. The main components and merits of these steps are presented. Technologies for object presentation are classified into three types: vector space, sliding window, and structure relationship models. Future development trends are discussed briefly.

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