CNN和M-SLIC超像素特征融合用于VHR图像分类

Belkis Asma Semcheddine, A. Daamouche
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引用次数: 0

摘要

在这篇文章中,我们提出了一种融合手工特征和抽象特征的方法,用于VHR遥感图像分类。该策略允许多级特征融合,从而丰富了可用的光谱数据,从而获得更好的类可分性。第一步,使用卷积神经网络提取深度特征。然后将这些特征与通过M-SLIC超像素分割得到的Haralick特征融合。然后将组合的特征与图像的光谱特征连接起来,并使用支持向量机进行分类。我们在一幅VHR卫星图像上进行了实验,得到的结果使我们能够验证所建议方案的优越性(总体分类精度提高16%以上)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CNN and M-SLIC Superpixels Feature Fusion for VHR Image Classification
In this letter, we present a method for fusing handcrafted features with abstract features for the purpose of VHR remote sensing image classification. The proposed strategy allows for a multi-level feature fusion, which enriches the available spectral data, resulting in a better class separability. In a first step, deep features are extracted using Convolutional Neural Networks. These features are then fused with Haralick features drawn out by means of M-SLIC superpixels segmentation. The combined features are then concatenated with the spectral features of the image and classified using Support Vector Machines. Our experiments were conducted on a VHR satellite image, and the obtained results qualify us to validate the superiority of the suggested scheme (over 16% overall classification accuracy improvement).
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