研究目的
To solve the problems of PolSAR data coding, feature extraction, and land cover classification by proposing a new encoding mode of polarimetric scattering matrix and a novel PolSAR image classification algorithm based on polarimetric scattering coding and convolutional network.
研究成果
The proposed polarimetric convolutional network, based on polarimetric scattering coding and fully convolutional network, demonstrates robustness and achieves better classification results compared to contrast algorithms. The method preserves the structural semantic information of the image in the raw data, leading to higher classification accuracies and maps very close to the ground truth.
研究不足
The technical and application constraints of the experiments, as well as potential areas for optimization, are not explicitly mentioned in the paper.
1:Experimental Design and Method Selection:
The methodology involves proposing a polarimetric scattering coding for complex matrix encoding and designing a corresponding classification algorithm based on the convolution network.
2:Sample Selection and Data Sources:
Four PolSAR images from an airborne system (NASA/JPL-Caltech AIRSAR) and a spaceborne system (Canadian Space Agency RADARSAT-2) are used.
3:List of Experimental Equipment and Materials:
The experiments are running on an HP Z840 workstation with an Intel Xeon(R) CPU, a GeForce GTX TITAN X GPU, and 64G RAM under Ubuntu
4:04 LTS, implemented using the deep learning framework of TensorFlow. Experimental Procedures and Operational Workflow:
The proposed method involves polarimetric scattering coding of the scattering matrix, feeding the encoded matrix into a classifier based on a fully convolutional network, and performing feature aggregation to fuse two kinds of features.
5:Data Analysis Methods:
The performance is evaluated by single class recall rate, overall accuracy (OA), average accuracy (AA), and kappa coefficient (Kappa).
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