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Determining the most representative image on a Web page

机译:确定网页上最具代表性的图像

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We investigate how to determine the most representative image on a Web page. This problem has not been thoroughly investigated and, up to today, only expert-based algorithms have been proposed in the literature. We attempt to improve the performance of known algorithms with the use of Support Vector Machines (SVM). Besides, our algorithm distinguishes itself from existing literature with the introduction of novel image features, including previously unused meta-data protocols. Also, we design and attempt a less-restrictive ranking methodology in the image preprocessing stage of our algorithm. We find that the application of the SVM framework with our improved classification methodology increases the F1 score from 27.2% to 38.5%, as compared to a state-of-the-art method. Introducing novel image features and applying backward feature selection, we find that the F1 score rises to 40.0%. Lastly, we use a class-weighted SVM in order to resolve the imbalance in number of representative images. This final modification improves the classification performance of our algorithm even further to 43.9%, outperforming our benchmark algorithms, including those of Facebook and Google. Suggested beneficiaries are the search engine community, image retrieval community, including the commercial sector due to superior performance. (C) 2019 Elsevier Inc. All rights reserved.
机译:我们调查如何确定网页上最具代表性的图像。这个问题尚未彻底调查,达到今天,在文献中只提出了基于专家的算法。我们试图通过使用支持向量机(SVM)来提高已知算法的性能。此外,我们的算法通过引入新颖的图像特征来区分本身与现有文献,包括先前未使用的元数据协议。此外,我们在算法的图像预处理阶段设计并尝试了更少限制的排名方法。我们发现,与我们改进的分类方法的SVM框架的应用增加,与最先进的方法相比,将F1分数从27.2%增加到38.5%。介绍新颖的图像特征和应用后向功能选择,发现F1得分上升到40.0%。最后,我们使用类加权的SVM来解决代表性图像数量的不平衡。此最终修改将甚至进一步提高了我们算法的分类性能,甚至进一步为43.9%,优于我们的基准算法,包括Facebook和Google的基准算法。建议的受益人是搜索引擎社区,图像检索社区,包括商业部门由于卓越的性能。 (c)2019 Elsevier Inc.保留所有权利。

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