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Modelling Crowdsourcing Originated Keywords within the Athletics Domain

机译:在田径运动领域对众包起源关键字进行建模

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Image classification arises as an important phase in the overall process of automatic image annotation and image retrieval. Usually, a set of manually annotated images is used to train supervised systems and classify images into classes. The act of crowdsourcing has largely focused on investigating strategies for reducing the time, cost and effort required for the creation of the annotated data. In this paper we experiment with the efficiency of various classifiers in building visual models for keywords through crowdsourcing with the aid of Weka tool and a variety of low-level features. A total number of 500 manually annotated images related to athletics domain are used to build and test 8 visual models. The experimental results have been examined using the classification accuracy and are very promising showing the ability of the visual models to classify the images into the corresponding classes with the highest average classification accuracy of 74.38% in the purpose of SMO data classifier.
机译:在自动图像注释和图像检索的整个过程中,图像分类成为一个重要阶段。通常,使用一组手动注释的图像来训练受监管的系统并将图像分类。众包行为主要集中在调查策略上,以减少创建带注释数据所需的时间,成本和精力。在本文中,我们借助Weka工具和多种低级功能,通过众包来尝试使用各种分类器构建关键字的视觉模型的效率。总共500幅与运动领域相关的手动注释图像用于构建和测试8个视觉模型。已经使用分类精度检查了实验结果,并且非常有前途的展示了视觉模型能够将图像分类为相应的类别,从而达到SMO数据分类器的最高平均分类准确率74.38%。

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