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High Resolution Satellite Image Indexing And Retrieval Using SURF Features And Bag of Visual Words

机译:使用SURF功能和视觉单词包对高分辨率卫星图像进行索引和检索

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In this paper, we evaluate the performance of SURF descriptor for high resolution satellite imagery (HRSI) retrieval through a BoVW model on a land-use/land-cover (LULC) dataset. Local feature approaches such as SIFT and SURF descriptors can deal with a large variation of scale, rotation and illumination of the images, providing, therefore, a better discriminative power and retrieval efficiency than global features, especially for HRSI which contain a great range of objects and spatial patterns. Moreover, we combine SURF and color features to improve the retrieval accuracy, and we propose to learn a category-specific dictionary for each image category which results in a more discriminative image representation and boosts the image retrieval performance.
机译:在本文中,我们通过BoVW模型在土地利用/土地覆盖(LULC)数据集上评估SURF描述符在高分辨率卫星图像(HRSI)检索中的性能。诸如SIFT和SURF描述符之类的局部特征方法可以处理图像的比例,旋转和照度的较大变化,因此提供比全局特征更好的判别力和检索效率,尤其是对于包含大量对象的HRSI和空间模式。此外,我们将SURF和颜色特征相结合以提高检索精度,并且我们建议为每个图像类别学习一个特定于类别的词典,这将导致更具判别性的图像表示并提高图像检索性能。

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