High Resolution Remote Sensing Image Classification Based on Deep Transfer Learning and Multi Feature Network

学习迁移 计算机科学 人工智能 遥感 上下文图像分类 理论(学习稳定性) 特征(语言学) 科恩卡帕 图像融合 模式识别(心理学) 图像(数学) 图像分辨率 深度学习 高分辨率 融合 特征提取 机器学习 地质学 语言学 哲学
作者
Xinyan Huang
出处
期刊:IEEE Access [Institute of Electrical and Electronics Engineers]
卷期号:11: 110075-110085
标识
DOI:10.1109/access.2023.3320792
摘要

To improve the automatic classification accuracy of remote sensing images, this study raises a high-resolution remote sensing image classification model that combines deep transfer learning and multi-feature network. In this paper, deep transfer learning is the core technology of remote sensing image classification model, and VGG16, Inception V3, ResNet50 and MobileNet are used to build a fusion classification model through serial fusion. By testing the fusion model, the Transfer Learning ResNet50-MobileNet (TL-RM) model with the best performance was obtained. Finally, experimental analysis verified its significant stability: the average accuracy of TL-RM on a small sample high-resolution remote sensing image dataset was 96.8%, and the Kappa coefficient was 0.964, both of which were the highest values among all models. The accuracy of this model shows a slight upward trend and then stabilizes as the iterations increases. The training and testing sets accuracy ultimately stabilizes at around 100% and 98%, and the loss value ultimately stabilizes at around 1%. Moreover, TL-RM only has a low classification accuracy for residential areas in remote sensing images, with a classification accuracy of over 97% for other categories. The experiment shows that the TL-RM model has significant accuracy and stability, providing a reliable theoretical and experimental basis for remote sensing image classification research.
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