Farmland Extraction from UAV Remote Sensing Images Based on Improved SegFormer Model

IF 2.2 4区 地球科学 Q3 ENVIRONMENTAL SCIENCES Journal of the Indian Society of Remote Sensing Pub Date : 2024-09-19 DOI:10.1007/s12524-024-02004-y
Yuqing Chen, Xiuxin Wang
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Abstract

To further improve the accuracy of extracting farmland spatial distribution information, this thesis proposes an improved SegFormer model for extracting farmland spatial distribution information from unmanned aerial vehicle images. This method first introduces Efficient Channel Attention to optimize each transformer block in the encoder. Then, input the output results of each optimized block into the introduced BiFPN layer for enhanced feature extraction, and input the weighted fused multi-level features from the encoder into the decoder. By aggregating multi-level features through the Multi Layer Perceptron, local and global attention are combined, and then further weighted feature fusion is achieved through BiFPN. Finally, tthe Squeeze Excitation and Efficient Channel Attention was proposed to enhance channel features and improve model performance. The experimental results indicate that the improved SegFormer model’s mean intersection over union and mean pixel accuracy were 96.91 SegFormer model, it has increased by 1.55 union and pixel accuracy for farmland is 98.42 than other semantic segmentation models, effectively extract the extraction accuracy of farmland edges and small farmland from drone images.

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基于改进的 SegFormer 模型从无人机遥感图像中提取农田
为进一步提高农田空间分布信息提取的准确性,本论文提出了一种改进的 SegFormer 模型,用于从无人机图像中提取农田空间分布信息。该方法首先引入高效通道关注(Efficient Channel Attention)来优化编码器中的每个变压器块。然后,将每个优化块的输出结果输入引入的 BiFPN 层以增强特征提取,并将编码器中的加权融合多级特征输入解码器。通过多层感知器聚合多层次特征,将局部和全局注意力结合起来,然后通过 BiFPN 进一步实现加权特征融合。最后,提出了 "挤压激励和高效信道注意 "来增强信道特征,提高模型性能。实验结果表明,改进后的 SegFormer 模型的平均交集大于联合度和平均像素精度为 96.91,比其他语义分割模型的联合度提高了 1.55,农田的像素精度为 98.42,有效地提取了无人机图像中农田边缘和小块农田的提取精度。
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来源期刊
Journal of the Indian Society of Remote Sensing
Journal of the Indian Society of Remote Sensing ENVIRONMENTAL SCIENCES-REMOTE SENSING
CiteScore
4.80
自引率
8.00%
发文量
163
审稿时长
7 months
期刊介绍: The aims and scope of the Journal of the Indian Society of Remote Sensing are to help towards advancement, dissemination and application of the knowledge of Remote Sensing technology, which is deemed to include photo interpretation, photogrammetry, aerial photography, image processing, and other related technologies in the field of survey, planning and management of natural resources and other areas of application where the technology is considered to be appropriate, to promote interaction among all persons, bodies, institutions (private and/or state-owned) and industries interested in achieving advancement, dissemination and application of the technology, to encourage and undertake research in remote sensing and related technologies and to undertake and execute all acts which shall promote all or any of the aims and objectives of the Indian Society of Remote Sensing.
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