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Study of Multiscale Fused Extraction of Cropland Plots in Remote Sensing Images Based on Attention Mechanism

机译:基于注意力机制的遥感影像耕地样地多尺度融合提取研究

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摘要

Cropland extraction from remote sensing images is an essential part of precise digital agriculture services. This paper proposed an SSGNet network of multiscale fused extraction of cropland based on the attention mechanism to address issues with complex cropland feature types in remote sensing images that resulted in blurred boundaries and low accuracy in plot partitioning. The proposed network contains different modules, such as spatial gradient guidance and dilated semantic fusion. It employs the image gradient attention guidance module to fully extract cropland plot features. This causes the feature to be transferred from the encoding layer to the decoding layer, creating layers full of key features within the cropland and making the extracted cropland information more accurate. In addition, this study also solves the problem caused by a large amount of spatial feature information, which losses easily during the downsampling process of continuous convolution in the coding layer. Aiming to solve this issue, we put forward a model for consensus fusion of multiscale spatial features to fuse each-layer feature of the coding layer through dilated convolution with different dilated ratios. This approach was proposed to make the segmentation results more comprehensive and complete. The lab findings showed that the Precision, Recall, MIoU, and F1 score of the multiscale fusion segmentation SSGNet network based on the attention mechanism had achieved 93.46, 90.91, 85.54, and 92.73, respectively. Its segmentation effect on cropland was better than other semantic segmentation networks and can effectively promote cropland semantic extraction.
机译:遥感影像耕地提取是精准数字农业服务的重要组成部分。针对遥感影像中耕地特征类型复杂、边界模糊、样地划分精度低的问题,提出了一种基于注意力机制的多尺度融合提取SSGNet网络。所提出的网络包含不同的模块,如空间梯度引导和扩展语义融合。采用图像梯度注意力引导模块,充分提取耕地样地特征。这样可以使要素从编码层转移到解码层,从而在农田内创建充满关键要素的图层,并使提取的农田信息更加准确。此外,该研究还解决了编码层连续卷积下采样过程中空间特征信息量大的问题。针对这一问题,我们提出了一种多尺度空间特征一致性融合模型,通过不同膨胀比的膨胀卷积来融合编码层的各层特征。提出这种方法是为了使分割结果更加全面和完整。实验结果表明,基于注意力机制的多尺度融合分割SSGNet网络的Precision、Recall、MIoU和F1得分分别达到93.46%、90.91%、85.54%和92分。分别为 73%。其对农田的分割效果优于其他语义分割网络,能有效促进农田语义提取。

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