机构地区:[1]西北农林科技大学信息工程学院,杨凌712100 [2]宁夏智慧农业产业技术协同创新中心,银川750004
出 处:《农业工程学报》2022年第7期229-236,共8页Transactions of the Chinese Society of Agricultural Engineering
基 金:国家重点研发计划项目(2020YFD1100601)。
摘 要:精准获取葡萄种植区分布信息对其精细化管理和优质基地建设具有重要意义,通常大区域种植区识别主要基于遥感影像完成,但葡萄种植区空间位置的分散性和背景环境的复杂性,使得种植区识别的精度不高。该研究基于DeepLabv3+网络,改进网络输入通道数使其能够接受更多的光谱信息,同时构建波段信息增强模块(BandInformation Enhancement,BIE),利用各波段特征图之间的相关性生成综合特征,提出了波段信息增强的葡萄种植区识别方法(BIE-DeepLabv3+)。在2016和2019年高分二号影像葡萄种植区数据集上训练网络,在2020年影像上测试其性能,结果表明,改进模型输出结果的平均像素精度和平均交并比分别为98.58%和90.27%,识别效果好于机器学习SVM算法,在深度学习DeepLabv3+模型的基础上分别提高了0.38和2.01个百分点,比SegNet分别提高了0.71和4.65个百分点。BIE-DeepLabv3+模型拥有更大的感受野和捕获多尺度信息特征的同时放大了地物间的差异,能够解决影像中葡萄种植区存在类间纹理相似性、背景和环境复杂等问题,在减少模型参数的同时预测出的葡萄种植区更加完整,且边缘识别效果良好,为较大区域内背景复杂的遥感图像葡萄种植区识别提供了有效方法。Accurate and rapid identification has been of great importance to obtain the spatial distribution of grape growing areas in recent years.The spatial information can be used to guide the fine management of planting areas and high-quality base construction in an orchard.Recognition of large-scale crop growing areas has been usually implemented using remote sensing images.However,the low accuracy of planting area recognition can be induced by the dispersed patches and the complex background.Fortunately,the convolution operation in deep learning can effectively extract the texture features of images.Among them,semantic segmentation has been one of the most important processing for remote sensing images.In this study,an improved band enhancement Deep Labv3+(BIE-Deep Labv3+) was proposed for the multispectral image recognition of grape planting areas.An encoder-decoder structure was employed in the DeepLabv3+.Atrous convolution was then applied to encode the multi-scale contextual information in the encoder module.The decoder module was used to effectively capture the sharp object boundaries for the gradual recovery of spatial information.As such,the DeepLabv3+ model was used to require the key features suitable for the high recognition accuracy of grape growing areas with different area sizes and scattered spatial locations.Since the combination of various bands reflected the differences between features,the DeepLabv3+ model was modified to concurrently handle four bands of remote sensing images.In addition,the band enhancement module was also built to determine the interdependencies between the band channel maps.All spectral bands of features were weighted to clarify the semantic dependency relationship among the spectral band feature maps.The ground features were distinguished to fully utilize the spectral information in each band.The dataset was generated through labeling the grape growing areas in the GaoFen-2 remote sensing images taken in 2016 and 2019.Then the model is trained on this dataset.The testing was al
关 键 词:深度学习 语义分割 DeepLabv3+ 多光谱影像 葡萄种植区
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