基于空间注意模块的Siamese U-Net区域图像无人机变化检测

L. Khalid, G. Jati, W. Caesarendra, W. Jatmiko
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引用次数: 1

摘要

本研究讨论了一种新的任务变化检测模型的发展。以U-Net为基本架构的Siamese神经网络与空间注意模块相结合,实现任务变化检测。开发该模型是为了获得性能良好的轻量化模型。在实施中,不需要使用巨大的资源。为了对模型进行基准测试,我们使用了LEVIR-CD数据集,其中该数据集有两个在不同时间拍摄的成对图像。这两幅配对图像所包含的信息是,在拍摄这两幅图像的过程中,在某一区域存在诸如房屋等建筑物的增加或减少等变化。我们将提出的模型与没有空间注意模块的U-Net和Siamese U-Net进行了比较,以了解它们在性能上的差异。然后,我们还将F1得分与LEVIR-CD数据集的基线模型进行了比较。在执行epoch为100的超参数调优后,结果是测试的F1 Scores能够以更快的训练时间平衡基线模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Change Detection from Areal Imagery Drones Using Siamese U-Net with Spatial Attention Module
This research discusses the development of a new model for task change detection. Siamese Neural networks with U-Net as basic architecture are combined with spatial attention modules to perform task change detection. This model is developed to get a lightweight model with good performance. In the implementation, there is no need to use enormous resources. To benchmark the model, we used the LEVIR-CD dataset, where this dataset has two paired images taken at different times. The information contained in the two paired images is that there are changes such as the presence of buildings such as houses that increase or decrease in a certain area during the time of taking the two images. We compared the proposed model with U-Net and Siamese U-Net without spatial attention modules to see how they differ in performance. Then, We also compared the F1 Score with the baseline model of the LEVIR-CD dataset. After hyperparameter tuning with epochs of 100 is performed, the result is that the F1 Scores tested can balance the baseline model with a faster training time.
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