Skip to content

ZhaohuiXue/S3Net

Repository files navigation

%
% S3Net: Spectral–Spatial Siamese Network for Few-Shot Hyperspectral Image Classification.
%
%    This demo shows the S3Net model for hyperspectral image classification.
%
%    main.py ....... A main script executing experiments upon IP, PU, and HU data sets.
%    data_read.py ....... A script implementing various data manipulation functions.
%    Function.py ....... A script implementing the precision calculation, claasificaiton map drawing, and etc.
%    model.pyd ....... A script implementing the S3Net model.
%    loss_function.py ....... A script implementing some loss functions.
%    Final_Experiment.csv ...... A csv saving the accuracy information after training
% 
%    /Dataset ............... The folder including data sets, we put in Salinas in it.
%    /model_results ............... The folder containing the model parameters after training.
%
%   --------------------------------------
%   Note: Required core python libraries
%   --------------------------------------
%   1. python 3.7
%   2. pytorch 1.7.1
%   3. torchvision 0.8.2

%   --------------------------------------
%   Cite:
%   --------------------------------------
%
%   [1] Z. Xue, Y. Zhou and P. Du, "S3Net: Spectral-Spatial Siamese Network for Few-Shot Hyperspectral Image Classification," in IEEE Transactions on Geoscience and Remote Sensing, 2022, doi: 10.1109/TGRS.2022.3181501.
%   --------------------------------------
%   Copyright & Disclaimer
%   --------------------------------------
%
%   The programs contained in this package are granted free of charge for
%   research and education purposes only. 
%
%   Copyright (c) 2021 by Zhaohui Xue & Yiyang Zhou
%   zhaohui.xue@hhu.edu.cn & hohai_zyy@163.com
%   --------------------------------------
%   For full package:
%   --------------------------------------
%   https://sites.google.com/site/zhaohuixuers/

About

A DEMO for "S3Net: Spectral-Spatial Siamese Network for Few-Shot Hyperspectral Image Classification" (Xue et al., TGRS, 2022)

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages