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Research on Change Detection Method of High-Resolution Remote Sensing Images Based on Subpixel Convolution

机译:基于子像素卷积的高分辨率遥感图像变化检测方法研究

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摘要

Remote sensing image change detection method plays a great role in land cover research, disaster assessment, medical diagnosis, video surveillance, and other fields, so it has attracted wide attention. Based on a small sample dataset from SZTAKI AirChange Benchmark Set, in order to solve the problem that the deep learning network needs a large number of samples, this work first uses nongenerative sample augmentation method and generative sample augmentation method based on deep convolutional generative adversarial networks, and then, constructs a remote sensing image change detection model based on an improved DeepLabv3+ network. This model can realize end-to-end training and prediction of remote sensing image change detection with subpixel convolution. Finally, Landsat 8, Google Earth, and Onera satellite change detection datasets are used to verify the generalization performance of this network. The experimental results show that the improved network accuracy is 95.1% and the generalization performance is acceptable.
机译:遥感图像改变检测方法在陆地覆盖研究,灾害评估,医疗诊断,视频监控等领域起着很大的作用,因此它引起了广泛的关注。基于Sztaki Airchange基准组的小型样本数据集,为了解决深度学习网络需要大量样本的问题,这项工作首先使用基于深度卷积生成的对抗网络的月种式采样增强方法和生成样本增强方法然后,基于改进的DEEPLABV3 +网络构造遥感图像改变检测模型。该模型可以实现与子像素卷积的遥感图像变化检测的端到端训练和预测。最后,Landsat 8,Google地球和Onera卫星改变检测数据集用于验证该网络的泛化性能。实验结果表明,提高的网络精度为95.1%,泛化性能是可接受的。

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