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A new comprehensive approach for earth observation scene classification using joint image and text analysis

机译:基于联合图像和文本分析的地球观测场景分类综合方法

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The amount of data available on the internet provides massive additional information for the Earth Observation (EO) imagery. Periodical news, various reports and measurements, pictures or online encyclopedias are just few examples of the existent information. Occasionally, this data offers new perspectives for EO image understanding and interpretation. However, current image analysis do not benefit from the advantage given by external sources. To overcome these drawbacks, the present paper proposes an approach that goes beyond traditional information mining by using a joint image and text analysis. Fast Compression Distance (FCD) is computed to measure the similarities inside a collection of very high resolution images and text files. The main purpose is to discover common patterns within the data, without any a priori assumption, parameter-free, relying on data compression-based techniques. A hierarchical clustering is performed in order to learn about the dependencies between different types of data.
机译:互联网上可用的数据量为对地观测(EO)图像提供了大量额外的信息。定期新闻,各种报告和测量,图片或在线百科全书只是现有信息的几个例子。有时,这些数据为EO图像的理解和解释提供了新的视角。但是,当前的图像分析不能从外部来源获得的优势中受益。为了克服这些缺点,本文提出了一种通过使用联合图像和文本分析超越传统信息挖掘的方法。快速压缩距离(FCD)用于计算非常高分辨率的图像和文本文件的集合中的相似度。主要目的是发现数据中的通用模式,而无需任何先验假设,无需任何参数,即可依靠基于数据压缩的技术。为了了解不同类型的数据之间的依赖性,执行了分层聚类。

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