研究目的
To achieve high segmentation accuracy for multiscale roads with complex background in high-resolution visible remote sensing images.
研究成果
The HCN performs better than VGG, FCN, U-Net, CasNet, and SegNet on both the public data set and private data set. The proposed method has potential applications in the widely used high-resolution visible remote sensing images.
研究不足
The network training requires pixel-level road labeling which is labor-intensive. The method is a bit time-consuming.
1:Experimental Design and Method Selection:
The HCN fuses multigrained segmentations from a fully convolutional network, a modified U-Net, and a VGG subnetwork.
2:Sample Selection and Data Sources:
Training data set includes a public data set and a private data set from Jlin 1 business satellite.
3:List of Experimental Equipment and Materials:
NVIDIA Tesla V100 for testing.
4:Experimental Procedures and Operational Workflow:
Parameters of the subnetworks are trained using a stochastic gradient descent algorithm.
5:Data Analysis Methods:
Pixel accuracy, mean accuracy, mean region intersection over union, and frequency weighted IU are computed to evaluate the proposed HCN.
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