陈芳芳, 宋姿睿, 张景涵, 王梦楠, 吴门新, 张承明, 李峰, 柳平增, 杨娜. 融合多尺度特征的冬小麦空间分布提取方法[J]. 农业工程学报, 2022, 38(24): 268-274. DOI: 10.11975/j.issn.1002-6819.2022.24.029
    引用本文: 陈芳芳, 宋姿睿, 张景涵, 王梦楠, 吴门新, 张承明, 李峰, 柳平增, 杨娜. 融合多尺度特征的冬小麦空间分布提取方法[J]. 农业工程学报, 2022, 38(24): 268-274. DOI: 10.11975/j.issn.1002-6819.2022.24.029
    Chen Fangfang, Song Zirui, Zhang Jinghan, Wang Mengnan, Wu Menxin, Zhang Chengming, Li Feng, Liu Pingzeng, Yang Na. Extraction method for the spatial distribution of winter wheat using multi-scale features[J]. Transactions of the Chinese Society of Agricultural Engineering (Transactions of the CSAE), 2022, 38(24): 268-274. DOI: 10.11975/j.issn.1002-6819.2022.24.029
    Citation: Chen Fangfang, Song Zirui, Zhang Jinghan, Wang Mengnan, Wu Menxin, Zhang Chengming, Li Feng, Liu Pingzeng, Yang Na. Extraction method for the spatial distribution of winter wheat using multi-scale features[J]. Transactions of the Chinese Society of Agricultural Engineering (Transactions of the CSAE), 2022, 38(24): 268-274. DOI: 10.11975/j.issn.1002-6819.2022.24.029

    融合多尺度特征的冬小麦空间分布提取方法

    Extraction method for the spatial distribution of winter wheat using multi-scale features

    • 摘要: 获取到高质量的特征是从遥感影像中提取高精度的农作物空间分布的关键,该研究针对利用哨兵2A(Sentinel-2A)影像提取高精度的冬小麦空间分布开展研究。针对影像中存在的数据空间尺度不一致的问题,以生成式对抗网络为基础建立了降尺度模型REDS(Red Edge Down Scale),用于将B5、B6、B7、B11 4个通道的空间分辨率从20 m降为10 m;然后利用卷积神经网络构建了逐像素分割模型REVINet(Red Edge and Vegetation Index Feature Network),REVINet以10m分辨率的B2、B3、B4、B5、B6、B7、B8、B11,以及提取出的增强植被指数、归一化植被指数和归一化差值红边指数组合作为输入,进行逐像素分类。选择ERFNet、U-Net和RefineNet作为对比模型同REVINet开展对比试验,试验结果表明,该研究提出的方法在召回率(92.15%)、查准率(93.74%)、准确率(93.09%)和F1分数(92.94%)上均优于对比方法,表明了该研究在从Sentinel-2A中提取冬小麦空间分布方面具有明显的优势。

       

      Abstract: Abstract: An accurate extraction of the crop spatial distribution is of great significance for the decision-making on management measures in modern agriculture. Fortunately, the remote sensing images can be widely used as the important data sources for the spatial distribution of crops at present. It is a high demand to extract the high-quality features from the spatial distribution of crops using the remote sensing images. In this study, the Sentinel-2A images were selected to extract the high-precision spatial distribution of winter wheat, in order to avoid the data scale reduction and feature fusion. Firstly, the red edge resource was utilized to classify the important features of winter wheat. The visible light and red edge bands were also combined to effectively reduce the misclassification of pixels for the high accuracy. A downscale model Red Edge Down Scale (REDS) was then established to balance the spatial scale of the data in the Sentinel-2A images, due to the different band resolution between the red edge (20m) and the visible light (10m). The generative countermeasure network was constructed using the three red edge bands of B5, B6 and B7. More importantly, the spatial resolution of B11 shortwave infrared band was reduced from 20 to 10 m, in order to obtain the better consistence in the spatial resolution of visible light and red edge band. The edge blur of image was also prevented from the interpolation (nearest neighbor interpolation). Secondly, the inputs of REDS consisted of the low- and high-resolution channel, correspondingly to the spectral and texture information, respectively. The spatial structure information was then input from the high- into the low-resolution channel. As such, the improved model was achieved in the image data from the high-resolution red edge and short-wave infrared (SWIR) channel. Secondly, the original data was extracted, and then combined into the basic input data, including the three red edge bands after scaling down, the visible light band with a resolution of 10m, and three remote-sensing index products, namely Enhanced Vegetation Index (EVI), Normalized Difference Vegetation Index (NDVI), and Normalized Difference Red-Edge1 (NDRE1). Thirdly, the semantic feature extraction model was constructed as the Red Edge and Vegetation Index Feature Network (REVINet) using convolutional neural network. The coding and decoding units were constructed in the REVINet model using residual network. The linear model was used to fuse the multi-scale features for the output by the decoding units. SoftMax function was used as a classifier for the pixel-by-pixel classification. Finally, the segmentation, and the spatial distribution of winter wheat were generated to verify the REVINet model, compared with the ERFNet, U-Net, and RefineNet models. The experimental results show that the smoother contour edge was extracted from the planting area of winter wheat, particularly with the less misclassification. Meanwhile, the recall (92.15%), precision (93.74%), accuracy (93.09%), and F1 score (92.94%) were better than the rest models, indicating the ideal performance. The spatial distribution of the whole research area demonstrated that the winter wheat in China was mainly distributed in the south of the Great Wall in 2022. The relatively high accuracy of extracted areas was achieved with the better coincidence degree, compared with the standard released by the National Statistical Department in 2021. Therefore, the data organization and feature extraction can be expected to serve as the spatial distribution of winter wheat using the Sentinel-2A. The finding can also provide the technical reference for the Sentinel-2A data in the agricultural field.

       

    /

    返回文章
    返回