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When Self-Supervised Learning Meets Scene Classification: Remote Sensing Scene Classification Based on a Multitask Learning Framework

机译:当自我监督的学习符合场景分类时:基于多任务学习框架的遥感场景分类

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摘要

In recent years, the development of convolutional neural networks (CNNs) has promoted continuous progress in scene classification of remote sensing images. Compared with natural image datasets, however, the acquisition of remote sensing scene images is more difficult, and consequently the scale of remote sensing image datasets is generally small. In addition, many problems related to small objects and complex backgrounds arise in remote sensing image scenes, presenting great challenges for CNN-based recognition methods. In this article, to improve the feature extraction ability and generalization ability of such models and to enable better use of the information contained in the original remote sensing images, we introduce a multitask learning framework which combines the tasks of self-supervised learning and scene classification. Unlike previous multitask methods, we adopt a new mixup loss strategy to combine the two tasks with dynamic weight. The proposed multitask learning framework empowers a deep neural network to learn more discriminative features without increasing the amounts of parameters. Comprehensive experiments were conducted on four representative remote sensing scene classification datasets. We achieved state-of-the-art performance, with average accuracies of 94.21%, 96.89%, 99.11%, and 98.98% on the NWPU, AID, UC Merced, and WHU-RS19 datasets, respectively. The experimental results and visualizations show that our proposed method can learn more discriminative features and simultaneously encode orientation information while effectively improving the accuracy of remote sensing scene classification.
机译:近年来,卷积神经网络(CNNS)的发展在遥感图像的场景分类中促进了持续进展。然而,与自然图像数据集相比,遥感场景图像的获取更加困难,因此遥感图像数据集的比例通常很小。此外,遥感图像场景中出现了与小物体和复杂背景相关的许多问题,为基于CNN的识别方法呈现出巨大的挑战。在本文中,为了提高这种模型的特征提取能力和泛化能力,并更好地利用原始遥感图像中包含的信息,我们介绍了一个多任务学习框架,它结合了自我监督的学习和场景分类的任务。与以前的多任务方法不同,我们采用新的混合丢失策略,以将两个任务与动态重量相结合。所提出的多任务学习框架赋予了一个深度神经网络,以了解更多辨别特征而不增加参数的数量。在四个代表遥感场景分类数据集中进行了综合实验。我们实现了最先进的性能,平均准确性为94.21%,96.89%,99.11%,98.98%,分别为98.98%,分别为98.98%,分别为98.98%。实验结果和可视化表明我们所提出的方法可以了解更多辨别特征,同时编码方向信息,同时有效地提高遥感场景分类的准确性。

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