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hyperspectral-imagery-classification's Introduction

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Classification of Hyperspectral Imagery Using a New Fully Convolutional Neural Network

1. Abstract

With success of convolutional neural networks (CNNs) in computer vision, the CNN has attracted great atten-tion in hyperspectral classification. Many deep learning-based algorithms have been focused on deep feature extraction for classification improvement. In this letter, a novel deep learning framework for hyperspectral classification based on a fully CNN is proposed. Through convolution, deconvolution, and pooling layers, the deep features of hyperspectral data are enhanced. After feature enhancement, the optimized extreme learning machine (ELM) is utilized for classification. The proposed framework outperforms the existing CNN and other traditional classification algorithms by including deconvolution layers and an optimized ELM. Experimental results demonstrate that it can achieve outstanding hyperspectral classification performance.

2. Framework and FEFCN Architecture

2.1 Framework

Framework

2.2 FEFCN Architecture

Architecture

3. Implementation Details

  • Training data: 48*48 overlapped patches, stride: 15

  • Caffe platform with NVidia Tesla K80 GPU

  • Base learning rate is 0.001.

4. Results

4.1 Classification Maps

Indian_pine

Pavia

4.2 Classification Accuracy (%)

accuracy

5. Paper Link or Cite

  • Paper: Click Here

  • DOI: 10.1109/LGRS.2017.2786272

      @article{li2018classification,
        title={Classification of Hyperspectral Imagery Using a New Fully Convolutional Neural Network},
        author={Li, Jiaojiao and Zhao, Xi and Li, Yunsong and Du, Qian and Xi, Bobo and Hu, Jing},
        journal={IEEE Geoscience and Remote Sensing Letters},
        year={2018},
        publisher={IEEE}
      }
    

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hyperspectral-imagery-classification's Issues

I have some questions

I red and interested in your paper. but I think you need to open source code. If you open source code, I appreciate you.

And I get one more question. You said "learning deconvolution network for hyperspectral
feature enhancement is very meaningful". I can't understand that sentance. Thank you

模型代码

你好,请问能分享一下论文的模型代码吗?谢谢!

Code files

Hi,

It would be better if you can assist this repo with the code files that have implemented this CNN architecture.

模型代码

能否分享下您构建的的模型代码,谢谢。

项目工程

你好,我对你的CNN方法非常感兴趣,但我不知道你具体是怎么实现的,能不能给我发一下你的源代码,非常感谢[email protected]

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