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A comparative study of sampling analysis in scene classification of high-resolution remote sensing imagery

机译:高分辨率遥感影像场景分类中抽样分析的比较研究

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Scene classification is a key problem in the interpretation of high-resolution remote sensing imagery. The state-of-the-art methods, e.g. bag-of-visual-words model and its various extensions as well as the topic models, share similar procedures: patch sampling, feature description/learning and classification. Patch sampling is the first and the key procedure which has a great influence on the results. In this paper, we focus on the effects of different sampling strategies used in the literature sa as to find a suitable sampling strategy for the scene classification of high-resolution remote sensing images. We divide the existing sampling methods into two types: random sampling and saliency-based sampling, and embed them in the bag-of-visual-words framework for comparison owing to its simplicity, robustness and efficiency. Moreover, we compare it using another framework - Fisher kernel, to validate our conclusions. The experimental results on two commonly used datasets using two different frameworks both show that random sampling can give better or comparable results than other sampling methods.
机译:场景分类是高分辨率遥感影像解释中的关键问题。最先进的方法,例如视觉袋模型及其各种扩展以及主题模型共享相似的过程:补丁采样,功能描述/学习和分类。补丁采样是第一个也是关键的过程,对结果有很大的影响。在本文中,我们关注于文献sa中使用的不同采样策略的影响,以找到适合于高分辨率遥感影像场景分类的采样策略。我们将现有的采样方法分为两种类型:随机采样和基于显着性的采样,由于其简单性,鲁棒性和效率,将它们嵌入到“视觉袋”框架中进行比较。此外,我们使用另一个框架-Fisher内核对其进行比较,以验证我们的结论。在使用两个不同框架的两个常用数据集上的实验结果均表明,随机抽样可以提供比其他抽样方法更好或更可比的结果。

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