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학술논문KSII Transactions on Internet and Information Systems2017.01 발행

The Robust Derivative Code for Object Recognition

The Robust Derivative Code for Object Recognition

Hainan Wang(Beihang University, China); Baochang Zhang(Beihang University, China); Hong Zheng(Beihang University, China); Yao Cao(Beihang University, China); Zhenhua Guo(Tsinghua University, China); Chengshan Qian(Nanjing University of Information Science & Technology, China)

11권 1호, 272~287쪽

초록

This paper proposes new methods, named Derivative Code (DerivativeCode) and Derivative Code Pattern (DCP), for object recognition. The discriminative derivative code is used to capture the local relationship in the input image by concatenating binary results of the mathematical derivative value. Gabor based DerivativeCode is directly used to solve the palmprint recognition problem, which achieves a much better performance than the state-of-art results on the PolyU palmprint database. A new local pattern method, named Derivative Code Pattern (DCP), is further introduced to calculate the local pattern feature based on Dervativecode for object recognition. Similar to local binary pattern (LBP), DCP can be further combined with Gabor features and modeled by spatial histogram. To evaluate the performance of DCP and Gabor-DCP, we test them on the FERET and PolyU infrared face databases, and experimental results show that the proposed method achieves a better result than LBP and some state-of-the-arts.

Abstract

This paper proposes new methods, named Derivative Code (DerivativeCode) and Derivative Code Pattern (DCP), for object recognition. The discriminative derivative code is used to capture the local relationship in the input image by concatenating binary results of the mathematical derivative value. Gabor based DerivativeCode is directly used to solve the palmprint recognition problem, which achieves a much better performance than the state-of-art results on the PolyU palmprint database. A new local pattern method, named Derivative Code Pattern (DCP), is further introduced to calculate the local pattern feature based on Dervativecode for object recognition. Similar to local binary pattern (LBP), DCP can be further combined with Gabor features and modeled by spatial histogram. To evaluate the performance of DCP and Gabor-DCP, we test them on the FERET and PolyU infrared face databases, and experimental results show that the proposed method achieves a better result than LBP and some state-of-the-arts.

발행기관:
한국인터넷정보학회
DOI:
http://dx.doi.org/10.3837/tiis.2017.01.014
분류:
컴퓨터학

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The Robust Derivative Code for Object Recognition | KSII Transactions on Internet and Information Systems 2017 | AskLaw | 애스크로 AI