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2011年05月18日

【期刊论文】MATE: A Visual Based 3D Shape Descriptor*

覃征, LENG Biao, QIN Zheng, , CAO Xiaoman, WEI Tao and ZHANG Zhuxi

Chinese Journal of Electronics Vol.18, No.2, Apr. 2009,-0001,():

-1年11月30日

摘要

Since 3D models have been widely applied in many research areas, the techniques for content-based 3D model retrieval become necessary. In this paper, a novel visual based 3D shape descriptor called MATE is proposed. A modi-ed Principal component analysis (PCA) method for model normalization is presented at-rst. Sec-ondly, a new Adjacent angle distance Fourier (AADF) al-gorithm is proposed. Then the original two-viewed Dbucrer method is presented to extract characteristics of projected images. Finally, based on the modi-ed PCA method, the shape descriptor MATE is proposed by combining AADF, Tchebichef and two-viewed Dbu®er. Experimental results show that the descriptor MATE provides better retrieval performance than the best current descriptors.

3D model retrie, v, a, l, ,, Shape des, c, r, i, p, t, or,, Visual similarity.,

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2011年05月18日

【期刊论文】FTT Algorithm of Web Pageviews for Personalized Recommendation

覃征, Shen Yunfei, Qin Zheng, Yuan Kun, and Luo Xiaowei

LNCS 4185, pp. 133-139, 2006.,-0001,():

-1年11月30日

摘要

As the need for personalized services sharply increases caused by the booming of Internet, Web-based data-mining is becoming a valuable sources of thoughts and theory to satisfy the personalized system function. The characters of personalized data-mining is reviewed and discussed in the beginning, and then an innovative algorithm (FP-Tree time-validity algorithm) of Web pageviews, based on personalization, is raised. More authentic information can be efficiently got by adding time-validity coefficient to FTT-Tree storage structure to implement increment mining.

Data mining,, Web mining,, Personalization,, Association rule,, Time, v, a, l, idity.,

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2011年05月18日

【期刊论文】基于UKF 的双平台无源融合跟踪方法

覃征, 王中华 , , 韩毅

系统仿真学报,2007,19(19):4477~4481,4486,-0001,():

-1年11月30日

摘要

针对存在配准偏差的双平台无源融合跟踪系统,提出了基于扩维Unscented 卡尔曼滤波的配准跟踪一体化方法,在跟踪算法中,采用模糊调度方法调节“当前”统计模型参数,引入渐消因子,能够在状态发生突变时,迅速调整系统参数,提高了系统的抗机动目标自适应能力。仿真结果表明,这种跟踪算法能够较好地解决双平台无源融合跟踪系统中的配准偏差问题。

纯角度跟踪, 无源融合, Unscented 卡尔曼滤波器, 配准

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2011年05月18日

【期刊论文】An unscented particle filter for ground maneuvering target tracking*

覃征, GUO Rong-hua†, QIN Zheng

J Zhejiang Univ Sci A 2007 8(10): 1588-1595,-0001,():

-1年11月30日

摘要

In this study, an unscented particle filtering method based on an interacting multiple model (IMM) frame for a Markovian switching system is presented. The method integrates the multiple model (MM) filter with an unscented particle filter (UPF) by an interaction step at the beginning. The framework (interaction/mixing, filtering, and combination) is similar to that in a standard IMM filter, but an UPF is adopted in each model. Therefore, the filtering performance and degeneracy phenomenon of particles are improved. The filtering method addresses nonlinear and/or non-Gaussian tracking problems. Simulation results show that the method has better tracking performance compared with the standard IMM-type filter and IMM particle filter.

Interacting multiple model (, IMM), ,, Unscented particle filter (, UPF), ,, Ground target tracking,, Particle filter (, PF),

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2011年05月18日

【期刊论文】FPBN: A New Formalism for Evaluating Hybrid Bayesian Networks Using Fuzzy Sets and Partial Least-Squares

覃征, Xing-Chen Heng and Zheng Qin

LNCS 3645, pp. 209-217, 2005.,-0001,():

-1年11月30日

摘要

This paper proposes a general formalism for evaluating hybrid Bayesian networks. The formalism approximates a hybrid Bayesian network into the form, called fuzzy partial least-squares Bayesian network (FPBN). The form replaces each continuous variable whose descendants include discrete variables by a partner discrete variable and adding a directed link from that partner discrete variable to the continuous one. The partner discrete variable is acquired by the discretization of the original continuous variable with a fuzzification algorithm based on the structure adaptive-tuning neural network model. In addition, the dependence between the partner discrete variable and the original continuous variable is approximated by fuzzy sets, and the dependence between a continuous variable and its continuous and discrete parents is approximated by a conditional Gaussian regression (CGR) distribution in which partial least-squares (PLS) is proposed as an alternative method for computing the vector of regression parameter. The experimental results are included to demonstrate the performances of the new approach.

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    清华大学,北京

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