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Geographical topic learning for social images with a deep neural network

机译:利用深度神经网络对社会图像进行地理主题学习

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The use of geographical tagging in social-media images is becoming a part of image metadata and a great interest for geographical information science. It is well recognized that geographical topic learning is crucial for geographical annotation. Existing methods usually exploit geographical characteristics using image preprocessing, pixel-based classification, and feature recognition. How to effectively exploit the high-level semantic feature and underlying correlation among different types of contents is a crucial task for geographical topic learning. Deep learning (DL) has recently demonstrated robust capabilities for image tagging and has been introduced into geoscience. It extracts high-level features computed from a whole image component, where the cluttered background may dominate spatial features in the deep representation. Therefore, a method of spatial-attentional DL for geographical topic learning is provided and we can regard it as a special case of DL combined with various deep networks and tuning tricks. Results demonstrated that the method is discriminative for different types of geographical topic learning. In addition, it outperforms other sequential processing models in a tagging task for a geographical image dataset. (C) 2017 SPIE and IS&T
机译:在社交媒体图像中使用地理标签正成为图像元数据的一部分,并且对地理信息科学产生了极大的兴趣。众所周知,地理主题学习对于地理标注至关重要。现有方法通常使用图像预处理,基于像素的分类和特征识别来利用地理特征。如何有效利用高级语义特征和不同类型内容之间的潜在关联是地理主题学习的关键任务。深度学习(DL)最近展示了强大的图像标记功能,并已被引入地球科学。它提取从整个图像组件计算出的高级特征,其中杂乱的背景可能会主导深度表示中的空间特征。因此,提供了一种用于地理主题学习的空间注意DL方法,我们可以将其视为结合了各种深度网络和调整技巧的DL的特例。结果表明,该方法可区分不同类型的地理主题学习。此外,它在地理图像数据集的标记任务中胜过其他顺序处理模型。 (C)2017 SPIE和IS&T

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