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A boosting method based on SVM for relevance feedback in content-based 3D model retrieval

机译:基于SVM的基于内容的3D模型检索中相关反馈的提升方法

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The technique of relevance feedback has been introduced to content-based 3D model retrieval. Support Vector Machine as a learner is one of the classical approaches in relevance feedback. And the Boosting method, as one of the ensemble methods, can establish a strong leaner by combing the component learners. In this paper, a novel relevance feedback mechanism, which makes use of the main idea of boosting and the component SVM, is presented and applied to the content-based 3D model retrieval. The experiments, based on the 3D model database Princeton Shape Benchmark, show that the relevance feedback algorithm can improve the retrieval performance of traditional SVM in 3D model retrieval.
机译:相关性反馈技术已引入基于内容的3D模型检索中。支持向量机作为学习者是相关反馈中的经典方法之一。作为组合方法之一,Boosting方法可以通过组合组件学习器来建立更强大的学习器。本文提出了一种新颖的相关性反馈机制,该机制利用了Boosting的主要思想和组件SVM,并将其应用于基于内容的3D模型检索中。基于3D模型数据库Princeton Shape Benchmark的实验表明,相关反馈算法可以提高传统SVM在3D模型检索中的检索性能。

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