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Stochastic Optimized Relevance Feedback Particle Swarm Optimization for Content Based Image Retrieval

机译:基于内容的图像检索的随机优化相关反馈粒子群优化

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One of the major challenges for the CBIR is to bridge the gap between low level features and high level semantics according to the need of the user. To overcome this gap, relevance feedback (RF) coupled with support vector machine (SVM) has been applied successfully. However, when the feedback sample is small, the performance of the SVM based RF is often poor. To improve the performance of RF, this paper has proposed a new technique, namely, PSO-SVM-RF, which combines SVM based RF with particle swarm optimization (PSO). The aims of this proposed technique are to enhance the performance of SVM based RF and also to minimize the user interaction with the system by minimizing the RF number. The PSO-SVM-RF was tested on the coral photo gallery containing 10908 images. The results obtained from the experiments showed that the proposed PSO-SVM-RF achieved 100% accuracy in 8 feedback iterations for top 10 retrievals and 80% accuracy in 6 iterations for 100 top retrievals. This implies that with PSO-SVM-RF technique high accuracy rate is achieved at a small number of iterations.
机译:CBIR的主要挑战之一是根据用户的需要,弥合低级功能和高级语义之间的差距。为了克服这种差距,已成功应用与支持向量机(SVM)耦合的相关反馈(RF)。但是,当反馈样本很小时,基于SVM的RF的性能通常差。为了提高RF的性能,本文提出了一种新的技术,即PSO-SVM-RF,其将基于SVM的RF与粒子群优化(PSO)相结合。这种提出的技术的目的是提高基于SVM的RF的性能,也可以通过最小化RF数来最小化与系统的相互作用。 PSO-SVM-RF在包含10908个图像的珊瑚照片库上进行测试。从实验中获得的结果表明,所提出的PSO-SVM-RF在8个反馈迭代中实现了100%的精度,以获得前10个检索和80%的精度,在6个迭代中获得100个顶部检索。这意味着在PSO-SVM-RF技术,在少量迭代处实现高精度率。

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