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INTERNET TOURISM SCENE CLASSIFICATION WITH MULTI-FEATURE FUSION AND TRANSFER LEARNING

机译:多特征融合与转移学习的互联网旅游场景分类

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This paper proposes an internet tourism scene clas-sification algorithm, named multi-feature fusion with transfer learning, which utilizes unlabeled auxiliary data to facilitate image classification. Firstly, we do the SURF extraction and MRHM analysis for the training data separately, in which the training data set as combined with labeled im-ages and unlabeled auxiliary images. Then we compute the target feature vector for each image by merging the extended SURF descriptor and MRHM feature. Finally, we train the SVM classi-fier scene classification. Due to the capability of transferring knowledge, the proposed algorithm can effectively address insufficient training data problem for image classification. Experiments are conducted on a Beijing tourism scene dataset to evaluate the performance of our proposed algo-rithm. The experimental results are encouraging and promising.
机译:提出了一种基于互联网的旅游景点分类算法,即带有转移学习的多特征融合算法,该算法利用未标记的辅助数据进行图像分类。首先,我们分别对训练数据进行SURF提取和MRHM分析,其中训练数据集与标记的图像和未标记的辅助图像结合在一起。然后,通过合并扩展的SURF描述符和MRHM特征,为每个图像计算目标特征向量。最后,我们训练SVM分类场景。由于具有传递知识的能力,所提出的算法可以有效解决图像分类中训练数据不足的问题。在北京旅游景点数据集上进行了实验,以评估我们提出的算法的性能。实验结果令人鼓舞并且很有希望。

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