Deeply Fine-Tune a Convolutional Neural Network in Remote Sensing Image Classification: Easter Africa Countries (EAC)

M. J. Bosco, Wang Guoyin
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Abstract

Remote sensing is resource data accessible and easy to get in different areas without time-consuming. The traditional image recognition task was unlimited to better classification. A convolutional neural network (CNN) was introduced to improve remote sensing image classification accuracy by eliminating the intra-class and class similarity. Training CNN from scratch requires a large annotated dataset that is occasional in the remote sensing area. Transfer learning of CNN weights from another large non-remote sensing dataset can occasionally help overcome typical RS image applications. Transfer learning consists of fine-tuning CNN layers to better the new dataset. In this paper, all of the experiments were done on nine categories for dataset collected in east Africa community countries (EAC) using three state-of-the-art architectures based on the effect of fine-tuning and pre-trained weights of CNN. Results indicate that fine-tuning the entire network is not always a significant way; we compared it with a process of using VGG16-DensNet pre-trained weights and RF as machine learning classified results can be improved up to 97.60. Alternatively, fine-tuning the top blocks can save computational power and produce a more robust classifier.
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深度微调卷积神经网络在遥感图像分类中的应用:东非国家(EAC)
遥感是一种可访问的资源数据,在不同的地区容易获得,不需要花费时间。传统的图像识别任务对更好的分类是没有限制的。引入卷积神经网络(CNN),通过消除类内相似性和类相似性来提高遥感图像的分类精度。从头开始训练CNN需要一个大的带注释的数据集,这在遥感区域是偶然的。从另一个大型非遥感数据集迁移学习CNN权值偶尔可以帮助克服典型的RS图像应用。迁移学习包括微调CNN层以更好地处理新数据集。在本文中,基于CNN的微调和预训练权值的效果,使用三种最先进的架构,在东非社区国家(EAC)收集的数据集上对9个类别进行了所有实验。结果表明,对整个网络进行微调并不总是有效的方法;我们将其与使用VGG16-DensNet预训练权值和RF作为机器学习分类结果的过程进行了比较,可以提高到97.60。或者,微调顶部块可以节省计算能力并产生更健壮的分类器。
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