研究目的
To propose a new deep learning model, COpy INitialization Network (CoinNet), for multispectral imagery semantic segmentation that makes full use of the initial parameters in the pretrained network’s first convolutional layer.
研究成果
The proposed CoinNet model demonstrates superior performance in multispectral imagery semantic segmentation by effectively utilizing pretrained network parameters through a copy initialization strategy, highlighting the importance of initialization parameters in the earlier layers for transfer learning tasks.
研究不足
The study acknowledges that the copy initialization strategy may not be necessary for multispectral data sets with three bands and performs poorly on classes with very limited samples.
1:Experimental Design and Method Selection:
The study proposes CoinNet, a deep learning model for multispectral imagery semantic segmentation, utilizing a copy initialization strategy to leverage pretrained network parameters.
2:Sample Selection and Data Sources:
Uses the RIT-18 multispectral data set for validation, which includes training and testing sets separated to avoid contamination.
3:List of Experimental Equipment and Materials:
Not explicitly mentioned.
4:Experimental Procedures and Operational Workflow:
Involves transferring a pretrained SegNet model to CoinNet, adjusting the first convolutional layer for multispectral data, and fine-tuning the network on the RIT-18 data set.
5:Data Analysis Methods:
Evaluates performance using overall accuracy (OA) and average accuracy (AA) metrics.
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