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HybridCNN based hyperspectral image classification using multiscale spatiospectral features

机译:基于HybridCnn的超光图像分类使用多尺度季间谱特征

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Hyperspectral images (HSIs) are contiguous band images widely used in remote sensing applications. The evolution of deep learning techniques made a significant impact on HSI classification. Several HSI processing applications rely on various Convolutional Neural Network (CNN) models. However, the higher dimensionality nature of HSIs increases the computational complexity and leads to the Hughes phenomenon. Therefore most of the CNN models perform dimensionality reduction (DR) as a preprocessing step. Another challenge in HSI classification is the consideration of both spatial and spectral features for obtaining accurate results. A few 3-D-CNN models are designed to overcome this challenge, but it takes more execution time than other methods. This research work proposes a multiscale spatio-spectral feature based hybrid CNN model for hyperspectral image classification. Hybrid DR used for optimal band extraction, which performs linear Gaussian Random Projection (GRP) and non-linear Kernel Principal Component Analysis (KPCA). The proposed hybrid CNN classification technique extracts the spectral and spatial features for different window sizes using 3D-CNN. These features concatenated and fed into a 2D-CNN for further feature extraction and classification. The hybrid model is compared against various state-of-the-art CNN based techniques and found to showcase a satisfactory result with less computational complexity.
机译:高光谱图像(HSIS)是广泛用于遥感应用的连续频带图像。深度学习技术的演变对HSI分类产生了重大影响。几个HSI处理应用依赖于各种卷积神经网络(CNN)模型。然而,HSI的更高的维度性质提高了计算复杂性并导致休斯现象。因此,大多数CNN模型都以预处理步骤执行维度减少(DR)。 HSI分类中的另一个挑战是考虑空间和光谱功能,以获得准确的结果。旨在克服这一挑战的一些3-D-CNN型号,但比其他方法需要更多的执行时间。该研究工作提出了一种用于高光谱图像分类的多尺度的混合CNN模型。用于最佳频带提取的混合DR,其执行线性高斯随机投影(GRP)和非线性内核主成分分析(KPCA)。所提出的混合CNN分类技术使用3D-CNN提取不同窗口尺寸的光谱和空间特征。这些功能连接并进入2D-CNN以进一步提取和分类。将混合模型与各种最先进的基于CNN的技术进行比较,发现以较少的计算复杂性展示令人满意的结果。

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