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Ontology-Assisted Object Detection: Towards the Automatic Learning with Internet

机译:本体辅助的对象检测:面向Internet的自动学习

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Automatic detection approaches depend essentially on the use of classifiers, that in turn are based on the learning of a given training set. The choice of the training data is crucial: even if this aspect is often neglected, the visual information contained in the training samples can make the difference in a detection/classification scenario. A good training set has to be sufficiently informative to capture the nature of the object under analysis, but at the same time has to be generic enough to avoid overfitting and to cope with new instances of the object of interest. In this paper we follow those approaches that pursue automatic learning from Internet data. We try to show how such training set can be made more appropriate by leveraging on semantic technologies, like lexical resources and ontologies, in the task of retrieving images from the Web through the use of a search engine. Experiments on several object classes of the CalTechlOl dataset promote our idea, showing an average increment on the detection accuracy of about 8%.
机译:自动检测方法主要取决于分类器的使用,而分类器又基于对给定训练集的学习。训练数据的选择至关重要:即使经常忽略这一方面,训练样本中包含的视觉信息也可以在检测/分类场景中发挥作用。良好的训练集必须足够有信息才能捕获分析对象的性质,但同时又必须足够通用,以避免过度拟合并应对感兴趣对象的新情况。在本文中,我们采用了那些从Internet数据中自动学习的方法。我们试图展示如何利用语义技术(例如词汇资源和本体)来使这种训练集变得更加合适,该任务是通过使用搜索引擎从Web检索图像。对CalTech101数据集的几种对象类别进行的实验促进了我们的想法,显示出检测精度平均提高了8%。

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