Study on High-resolution Remote Sensing Image Scene Classification Using Transfer Learning

Ouyang Qian
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Abstract

Remote sensing image classification (RSIC) has been increasingly concerned and becoming a challenging task. Recently, deep convolutional neural networks (DCNN) offer the effective classification method include the capacity to handle high-dimensional data and to distinguish classes with very complex characteristics on the remote sensing community. However, the focus of these methods is on publicly available data sets in the field of remote sensing, there are few studies on RSIC composed of different benchmark datasets, which the complexity, diversity, and similarity of data greatly increase the difficulty of classification. In this paper, we reconstructed and selected one new dataset from two standard benchmark remote sensing datasets: UC Merged Land-Use and NWPU-RESISC45. We utilize three transfer learning frameworks to extract the high-level feature map and feed feature information into the proposed model for partial and full fine-tuning. Data augmentation technology is used to increase the number of training samples and dropout strategies to prevent overfitting. The experimental results demonstrate that the proposed methodology achieved remarkable performance in scene classification of overall accuracy: 90.1%,91.0%,93.3  with VggNet, DesNet, InceptionNet, respectively.
基于迁移学习的高分辨率遥感图像场景分类研究
遥感图像分类越来越受到人们的关注,并成为一项具有挑战性的任务。近年来,深度卷积神经网络(DCNN)提供了一种有效的分类方法,包括处理高维数据的能力和对具有非常复杂特征的遥感群体进行分类的能力。然而,这些方法的重点是在遥感领域的公开数据集上,对不同基准数据集组成的RSIC的研究很少,这些数据的复杂性、多样性和相似性大大增加了分类的难度。本文从UC合并土地利用和NWPU-RESISC45两个标准基准遥感数据集中重构并选择了一个新的数据集。我们利用三个迁移学习框架来提取高级特征映射,并将特征信息馈送到所提出的模型中进行部分和完全微调。数据增强技术用于增加训练样本数量和退出策略,以防止过拟合。实验结果表明,该方法在VggNet、DesNet、InceptionNet上的场景分类总体准确率分别达到90.1%、91.0%、93.3。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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