基于LC-KSVD稀疏编码的卫星图像分类

Kaveen Liyanage, Bradley M. Whitaker
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引用次数: 1

摘要

深度学习方法在许多任务中实现了非常高的分类精度,包括卫星图像分类。然而,这些方法缺乏其他分类算法的透明性和简单性。稀疏编码作为一种有效的图像分类工具,为用户提供了一种高效的算法,可以很容易地将分类输出与原始输入特征空间联系起来。在这项工作中,我们探讨了一种流行的稀疏编码算法的可行性和有效性,即标签一致k-均值奇异值分解(LC-KSVD),用于对卫星数据集Sat-4的图像进行分类。本文提供了一个在Sat-4数据集上使用特征提取、稀疏编码、字典学习和分类器训练的框架,达到了94.5%的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Satellite Image Classification Using LC-KSVD Sparse Coding
Deep learning methods achieve very high classification accuracies in many tasks, including satellite image classification. However, these methods lack the transparency and simplicity of other classification algorithms. Sparse coding has emerged as an effective tool in classifying images, and provides the user with an efficient algorithm that easily relates the classification output to the original input feature space. In this work, we explore the viability and the effectiveness of a popular sparse coding algorithm, label-consistent k-means singular value decomposition (LC-KSVD), in classifying images from the satellite data set Sat-4. This paper provides a framework for using feature extraction, sparse coding, dictionary learning, and classifier training on the Sat-4 dataset, achieving a 94.5 % accuracy.
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