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ASSESSING SEMANTIC INFORMATION IN CONVOLUTIONAL NEURAL NETWORK REPRESENTATIONS OF IMAGES VIA IMAGE ANNOTATION

机译:通过图像注释评估图像卷积神经网络表示中的语义信息

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Image annotation, or prediction of multiple tags for an image, is a challenging task. Most current algorithms are based on large sets of handcrafted features. Deep convolutional neural networks have recently outperformed humans in image classification, and these networks can be used to extract features highly predictive of an image's tags. In this study, we analyze semantic information in features derived from two pre-trained deep network classifiers by evaluating their performance in nearest neighbor-based approaches to tag prediction. We generally exceed performance of the manual features when using the deep features. We also find complementary information in the manual and deep features when used in combination for image annotation.
机译:图像注释或图像对图像的多个标签的预测是一个具有挑战性的任务。大多数当前算法基于大量的手工特征。深度卷积神经网络最近在图像分类中表现优于人类,并且这些网络可用于提取高度预测图像的标签的特征。在本研究中,我们通过评估其在基于邻近的标签预测的方法的性能来分析从两个预先训练的深网络分类器导出的特征的语义信息。我们通常超过使用深度功能时的手动功能的性能。当组合用于图像注释时,我们还在手动和深度功能中找到了互补信息。

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