MAAFEU-Net:基于混合关注模块和可调特征增强层的遥感影像土地利用分类新模型

Yonghong Zhang, Huajun Zhao, Guangyi Ma, Don Xie, Sutong Geng, Huanyu Lu, Wei Tian, K. T. C. L. K. Sian
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引用次数: 0

摘要

土地利用信息分类是土地资源管理的重要内容。为了精确提取空间信息,提出了一种基于混合关注模块和可调特征增强层(MAAFEU-net)的土地利用分类模型。我们独特的设计,即混合关注模块,使模型能够专注于特定目标的判别特征,并捕获不同土地利用类型中与阶级相关的特征。此外,提出了一种可调节的特征增强层,进一步增强相似类型的分类能力。我们使用公开可用的GID数据集和自建的瓜达尔数据集评估该模型的性能。采用六种语义分割深度网络进行比较。实验结果表明,MAAFEU-net的F1分数比下一模型分别高2.16%和2.3%,MIoU分别比下一模型高3.15%和3.62%。烧蚀实验结果表明,混合注意模块将MIoU提高了5.83%,添加可调特征增强层可进一步提高5.58%。这两种结构都有效地提高了整体土地利用分类的准确性。验证结果表明,MAAFEU-net能够获得精度较高的土地利用分类图像。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MAAFEU-Net: A Novel Land Use Classification Model Based on Mixed Attention Module and Adjustable Feature Enhancement Layer in Remote Sensing Images
The classification of land use information is important for land resource management. With the purpose of extracting precise spatial information, we present a novel land use classification model based on a mixed attention module and adjustable feature enhancement layer (MAAFEU-net). Our unique design, the mixed attention module, allows the model to concentrate on target-specific discriminative features and capture class-related features within different land use types. In addition, an adjustable feature enhancement layer is proposed to further enhance the classification ability of similar types. We assess the performance of this model using the publicly available GID dataset and the self-built Gwadar dataset. Six semantic segmentation deep networks are used for comparison. The experimental results show that the F1 score of MAAFEU-net is 2.16% and 2.3% higher than the next model and that MIoU is 3.15% and 3.62% higher than the next model. The results of the ablation experiments show that the mixed attention module improves the MIoU by 5.83% and the addition of the adjustable feature enhancement layer can further improve it by 5.58%. Both structures effectively improve the accuracy of the overall land use classification. The validation results show that MAAFEU-net can obtain land use classification images with high precision.
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