Lu Tingyu, Gao Meixiang, Wang Lei
College of Geographical Sciences, Harbin Normal University, Harbin, China.
Department of Geography and Spatial Information Techniques, Ningbo University, Ningbo, China.
Front Plant Sci. 2023 Aug 1;14:1196634. doi: 10.3389/fpls.2023.1196634. eCollection 2023.
The great success of deep learning in the field of computer vision provides a development opportunity for intelligent information extraction of remote sensing images. In the field of agriculture, a large number of deep convolutional neural networks have been applied to crop spatial distribution recognition. In this paper, crop mapping is defined as a semantic segmentation problem, and a multi-scale feature fusion semantic segmentation model MSSNet is proposed for crop recognition, aiming at the key problem that multi-scale neural networks can learn multiple features under different sensitivity fields to improve classification accuracy and fine-grained image classification. Firstly, the network uses multi-branch asymmetric convolution and dilated convolution. Each branch concatenates conventional convolution with convolution nuclei of different sizes with dilated convolution with different expansion coefficients. Then, the features extracted from each branch are spliced to achieve multi-scale feature fusion. Finally, a skip connection is used to combine low-level features from the shallow network with abstract features from the deep network to further enrich the semantic information. In the experiment of crop classification using Sentinel-2 remote sensing image, it was found that the method made full use of spectral and spatial characteristics of crop, achieved good recognition effect. The output crop classification mapping was better in plot segmentation and edge characterization of ground objects. This study can provide a good reference for high-precision crop mapping and field plot extraction, and at the same time, avoid excessive data acquisition and processing.
深度学习在计算机视觉领域的巨大成功为遥感图像的智能信息提取提供了发展机遇。在农业领域,大量深度卷积神经网络已应用于作物空间分布识别。本文将作物制图定义为一个语义分割问题,并提出了一种用于作物识别的多尺度特征融合语义分割模型MSSNet,旨在解决多尺度神经网络能够在不同敏感度领域学习多种特征以提高分类精度和细粒度图像分类的关键问题。首先,该网络使用多分支非对称卷积和空洞卷积。每个分支将常规卷积与不同大小卷积核的卷积以及具有不同扩张系数的空洞卷积连接起来。然后,将从每个分支提取的特征进行拼接以实现多尺度特征融合。最后,使用跳跃连接将浅层网络的低级特征与深层网络的抽象特征相结合,以进一步丰富语义信息。在使用哨兵 - 2 遥感图像进行作物分类的实验中,发现该方法充分利用了作物的光谱和空间特征,取得了良好的识别效果。输出的作物分类图在地块分割和地物边缘表征方面表现更好。本研究可为高精度作物制图和田间地块提取提供良好参考,同时避免过多的数据采集和处理。