A SVM Based Relevance Feedback Algorithm for 3D Model Retrieval

Yi Pan, Mingquan Zhou, Yachun Fan, Shaode Yu
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引用次数: 1

Abstract

In this paper, a novel relevance feedback algorithm based on SVM is proposed for 3d model retrieval. It aims to enhance retrieval accuracy in 3D model database systems. During the retrieval process, the system learns from the related samples marked by the user after each feedback, and update the training sample set with the previous returns. Thus an SVM classifier model is established and improved iteratively to retrieve. This method has strong generalization ability when the number of samples is small. In addition, this paper compares the performance of SVM with different kernel functions and the performance of SVM with the same kernel function using different low-level features.
基于SVM的三维模型检索相关反馈算法
提出了一种基于支持向量机的三维模型检索相关反馈算法。它旨在提高三维模型数据库系统的检索精度。在检索过程中,系统从用户每次反馈后标记的相关样本中学习,并用之前的返回值更新训练样本集。在此基础上,建立SVM分类器模型,并对其进行迭代改进。该方法在样本数量较少时具有较强的泛化能力。此外,本文还比较了具有不同核函数的支持向量机的性能以及具有相同核函数的支持向量机使用不同底层特征的性能。
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