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A Comparative Study of Sampling Analysis in the Scene Classification of Optical High-Spatial Resolution Remote Sensing Imagery

机译:光学高空间分辨率遥感影像场景分类中采样分析的比较研究

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Scene classification, which consists of assigning images with semantic labels by exploiting the local spatial arrangements and structural patterns inside tiled regions, is a key problem in the automatic interpretation of optical high-spatial resolution remote sensing imagery. Many state-of-the-art methods, e.g., the bag-of-visual-words model and its variants, the topic models and unsupervised feature learning-based approaches, share similar procedures: patch sampling, feature learning and classification. Patch sampling is the first and a key procedure, and it has a considerable influence on the results. In the literature, many different sampling strategies have been used, e.g., random sampling and saliency-based sampling. However, the sampling strategy that is most suitable for the scene classification of optical high-spatial resolution remote sensing images remains unclear. In this paper, we comparatively study the effects of different sampling strategies under the scenario of scene classification of optical high-spatial resolution remote sensing images. We divide the existing sampling methods into two types: random sampling and saliency-based sampling. Here, we consider the commonly-used grid sampling to be a specific type of random sampling method, and the saliency-based sampling consists of keypoint-based sampling and salient region-based sampling. To compare their performances, we rely on a standard bag-of-visual-words model to learn the global features for testing because of its simplicity, robustness and efficiency. In addition, we conduct experiments using a Fisher kernel framework to validate our conclusions. The experimental results obtained on two commonly-used datasets using different feature learning methods show that random sampling can provide comparable and even better performance than all of the saliency-based strategies.
机译:场景分类是在自动解释光学高空间分辨率遥感影像中的一个关键问题,其中包括通过利用平铺区域内的局部空间排列和结构模式为图像分配语义标签。许多最先进的方法,例如视觉词袋模型及其变体,主题模型和无监督的基于特征学习的方法,共享相似的过程:补丁采样,特征学习和分类。补丁采样是第一个也是关键的过程,它对结果有很大影响。在文献中,已经使用了许多不同的采样策略,例如随机采样和基于显着性的采样。但是,最适合光学高空间分辨率遥感影像场景分类的采样策略仍然不清楚。在本文中,我们比较研究了在光学高空间分辨率遥感影像的场景分类情况下不同采样策略的效果。我们将现有的抽样方法分为两种:随机抽样和基于显着性的抽样。在这里,我们认为常用的网格采样是一种特定类型的随机采样方法,基于显着性的采样包括基于关键点的采样和基于显着区域的采样。为了比较它们的性能,我们依靠标准的“视觉袋”模型来学习测试的全局功能,因为它具有简单性,鲁棒性和效率。此外,我们使用Fisher内核框架进行实验以验证我们的结论。在使用不同特征学习方法的两个常用数据集上获得的实验结果表明,与所有基于显着性的策略相比,随机采样可以提供可比甚至更好的性能。

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