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An Image Classification Method based on Improved Active Learning and Semi-supervised Learning Algorithm

机译:一种基于改进主动学习和半监督学习算法的图像分类方法

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摘要

Background: It presents a kind of multi-class image classification algorithm which is combined with Best Versus Second Best (BVSB) active learning technology and improved self-training semi-supervised learning technology. Methods: The algorithm integrates the advantages of active learning; semi-supervised learning and extreme learning machine simultaneously. It has better performance than that of single algorithm when it is used in different sets of image target recognition. Results: In addition, it also discussed the influence of various parameters on the algorithm performance in the experimental parts, and made related analysis of semi-supervised learning algorithm based on SVM (Support Vector Machine); the experimental results verified the superiority of proposed algorithm.
机译:背景:它介绍了一种多级图像分类算法,与最佳与第二次最佳(BVSB)有源学习技术相结合,改进了自培训半监督学习技术。 方法:该算法集成了主动学习的优势; 同时半监督学习和极端学习机。 在不同的图像目标识别中使用时,它具有比单次算法的性能更好。 结果:此外,还讨论了各种参数对实验零件算法性能的影响,并基于SVM(支持向量机)的半监控学习算法进行了相关分析; 实验结果验证了所提出的算法的优越性。

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