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Evaluation of Relevance Feedback Methods for 3D Shape Retrieval
Leng Biao 1 * #,Zheng Qin 2
1.Dep. of Computer Science & Technology, Tsinghua Uni.
2.Department of Computer Science & Technology, Tsinghua University
*Correspondence author
#Submitted by
Subject:
Funding: 教育部博士点基金(No.20060003060)
Opened online: 7 April 2008
Accepted by: none
Citation: Leng Biao,Zheng Qin.Evaluation of Relevance Feedback Methods for 3D Shape Retrieval[OL]. [ 7 April 2008] http://en.paper.edu.cn/en_releasepaper/content/20152
 
 
Relevance feedback as a powerful search engine technique bridges the gap between high-level semantic knowledge and low-level object representation. In this paper, we experimentally evaluate 5 state-of-the-art relevance feedback methods: Elad2001, Space Warping, Linear Discriminant Analysis (LDA), Biased Discriminant Analysis (BDA) and Support Vector Machine (SVM). In order to guarantee the experiments reproductive, they are assessed based on the best 3D shape descriptor DESIRE and the publicly available 3D model database Princeton Shape Benchmark (PSB). The experiments show that the retrieval performance of 3D shape search engine may be significantly improved with the application of relevance feedback. In contract to the ambiguous results comparing SVM and BDA from previous paper, SVM was found to outperform BDA with distinct advantage, and they were followed by Elad2001, LDA and Space Warping.
Keywords:3D Shape Retrieval, Relevance Feedback
 
 
 

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