Remote sensing extraction method of agricultural greenhouse based on an improved U-Net model
The agricultural greenhouse is a kind of agricultural facility,which is divided into transparent and non-transparent according to the surface transmittance.The large-scale statistics of agricultural greenhouses are of great significance to the survey of agricultural facilities,the formulation of agricultural policies,and the planning of county economic development.Aiming at the problem that manual statistics are time-consuming and laborious,this paper utilizes the convolutional neural network to extract agricultural greenhouses information from high-resolution remote sensing images.To solve the problems of insufficient semantic information extraction in remote sensing images and insufficient utilization of edge information of the U-Net model,this paper proposes the following improvements:1)The semantic segmentation task is optimized,and ConvNeXt and attention mechanism is utilized to extract deep semantic information of agricultural greenhouses in remote sensing images.2)The edge detection task is introduced,and the gated convolution layer and concate operation are used to fuse the semantic features of the encoder and the image gradient output by the decoder,and then the edge information is combined to optimize the segmentation results.After testing,the improved model can extract both transparent and non-transparent agricultural greenhouses information at the same time and the recognition effect is good,which is greatly improved compared with the traditional method.
U-NetGoogle imagesmulti-task learninginformation extraction of agricultural greenhouses