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Open AccessJournal ArticleDOI

Multiscale spatial-spectral convolutional network with image-based framework for hyperspectral imagery classification

Ximin Cui, +5 more
- 23 Sep 2019 - 
- Vol. 11, Iss: 19, pp 2220
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TLDR
This work proposes a multiscale spatial-spectral CNN for HSIs (HyMSCN) to integrate both multiple receptive fields fused features and multiscales spatial features at different levels to have comprehensive feature representation for classification.
Abstract
Jointly using spatial and spectral information has been widely applied to hyperspectral image (HSI) classification. Especially, convolutional neural networks (CNN) have gained attention in recent years due to their detailed representation of features. However, most of CNN-based HSI classification methods mainly use patches as input classifier. This limits the range of use for spatial neighbor information and reduces processing efficiency in training and testing. To overcome this problem, we propose an image-based classification framework that is efficient and straightforward. Based on this framework, we propose a multiscale spatial-spectral CNN for HSIs (HyMSCN) to integrate both multiple receptive fields fused features and multiscale spatial features at different levels. The fused features are exploited using a lightweight block called the multiple receptive field feature block (MRFF), which contains various types of dilation convolution. By fusing multiple receptive field features and multiscale spatial features, the HyMSCN has comprehensive feature representation for classification. Experimental results from three real hyperspectral images prove the efficiency of the proposed framework. The proposed method also achieves superior performance for HSI classification.

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Citations
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Hyperspectral Image Classification Method Based on 2D–3D CNN and Multibranch Feature Fusion

TL;DR: An HSI classification method based on the 2D–3D CNN and multibranch feature fusion and the state-of-the-art activation function Mish to further improve the classification performance.
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ABC-Net: Area-Boundary Constraint Network With Dynamical Feature Selection for Colorectal Polyp Segmentation

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Multiscale Context-Aware Ensemble Deep KELM for Efficient Hyperspectral Image Classification

TL;DR: A multiscale context-aware ensemble deep kernel extreme learning machine (MSC-EDKELM) for efficient HSI classification and experimental results demonstrate that the proposed frameworks outperform some classic and state-of-the-art methods with high computational efficiency, which can be employed to serve real-time applications.
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Hierarchical Multi-View Semi-Supervised Learning for Very High-Resolution Remote Sensing Image Classification

TL;DR: A hierarchical multi-view semi-supervised learning framework with CNNs (HMVSSL) is proposed for VHR remote sensing image classification, and the results show that the proposed method performs better than several state-of-the-art methods.
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References
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