Deep learning methods have been successfully applied to learn feature representations for high-dimensional data, where the learned features are able to reveal the nonlinear properties exhibited in the data. In this paper, deep learning method is exploited for feature extraction of hyperspectral data, and the extracted features can provide good discriminability for classification task. Training a deep network for feature extraction and classification includes unsupervised pretraining and supervised fine-tuning. We utilized stacked denoise autoencoder (SDAE) method to pretrain the network, which is robust to noise. In the top layer of the network, logistic regression (LR) approach is utilized to perform supervised fine-tuning and classificati...
Autoencoder (AE)-based deep neural networks learn complex problems by generating feature-space conju...
Unsupervised learning methods for feature extraction are becoming more and more popular. We combine ...
Image denoising and classification are typically conducted separately and sequentially according to ...
This paper presents an effective unsupervised sparse feature learn-ing algorithm to train deep convo...
Deep learning based methods have recently been successfully explored in hyperspectral image classifi...
In this letter, a new deep learning framework for spectral-spatial classification of hyperspectral i...
Stacked autoencoders (SAEs), as part of the deep learning (DL) framework, have been recently propose...
When confronted with limited labelled samples, most studies adopt an unsupervised feature learning s...
In this letter, a novel deep learning framework for hyperspectral image classification using both sp...
Due to the advantages of deep learning, in this paper, a regularized deep feature extraction (FE) me...
The construction of diverse dictionaries for sparse representation of hyperspectral image (HSI) clas...
Deep learning has emerged as a powerful method for hyperspectral image (HSI) classification. However...
This thesis is devoted to analyzing and processing hyperspectral images mainly with deep learning me...
International audienceDeep learning models have strong abilities in learning features and they have ...
Effective spatial-spectral pixel description is of crucial significance for the classification of hy...
Autoencoder (AE)-based deep neural networks learn complex problems by generating feature-space conju...
Unsupervised learning methods for feature extraction are becoming more and more popular. We combine ...
Image denoising and classification are typically conducted separately and sequentially according to ...
This paper presents an effective unsupervised sparse feature learn-ing algorithm to train deep convo...
Deep learning based methods have recently been successfully explored in hyperspectral image classifi...
In this letter, a new deep learning framework for spectral-spatial classification of hyperspectral i...
Stacked autoencoders (SAEs), as part of the deep learning (DL) framework, have been recently propose...
When confronted with limited labelled samples, most studies adopt an unsupervised feature learning s...
In this letter, a novel deep learning framework for hyperspectral image classification using both sp...
Due to the advantages of deep learning, in this paper, a regularized deep feature extraction (FE) me...
The construction of diverse dictionaries for sparse representation of hyperspectral image (HSI) clas...
Deep learning has emerged as a powerful method for hyperspectral image (HSI) classification. However...
This thesis is devoted to analyzing and processing hyperspectral images mainly with deep learning me...
International audienceDeep learning models have strong abilities in learning features and they have ...
Effective spatial-spectral pixel description is of crucial significance for the classification of hy...
Autoencoder (AE)-based deep neural networks learn complex problems by generating feature-space conju...
Unsupervised learning methods for feature extraction are becoming more and more popular. We combine ...
Image denoising and classification are typically conducted separately and sequentially according to ...