首页> 外文期刊>Geoscience and Remote Sensing Letters, IEEE >Satellite Image Classification via Two-Layer Sparse Coding With Biased Image Representation
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Satellite Image Classification via Two-Layer Sparse Coding With Biased Image Representation

机译:带有偏图像表示的两层稀疏编码的卫星图像分类

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摘要

This letter presents a method for satellite image classification aiming at the following two objectives: 1) involving visual attention into the satellite image classification; biologically inspired saliency information is exploited in the phase of the image representation, making our method more concentrated on the interesting objects and structures, and 2) handling the satellite image classification without the learning phase. A two-layer sparse coding (TSC) model is designed to discover the “true” neighbors of the images and bypass the intensive learning phase of the satellite image classification. The underlying philosophy of the TSC is that an image can be more sparsely reconstructed via the images (sparse I) belonging to the same category (sparse II). The images are classified according to a newly defined “image-to-category” similarity based on the coding coefficients. Requiring no training phase, our method achieves very promising results. The experimental comparisons are shown on a real satellite image database.
机译:这封信提出了一种用于卫星图像分类的方法,旨在实现以下两个目标:1)将目光集中到卫星图像分类中;在图像表示阶段利用了生物学启发的显着性信息,这使我们的方法更加集中于有趣的对象和结构,以及2)在没有学习阶段的情况下处理卫星图像分类。设计了两层稀疏编码(TSC)模型以发现图像的“真实”邻居,并绕过卫星图像分类的强化学习阶段。 TSC的基本原理是,可以通过属于同一类别(稀疏II)的图像(稀疏I)来更稀疏地重建图像。基于编码系数,根据新定义的“图像到类别”相似度对图像进行分类。不需要培训阶段,我们的方法就可以实现非常有希望的结果。实验比较显示在真实的卫星图像数据库上。

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