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Exploring Kernel Based Spatial Context for CNN Based Hyperspectral Image Classification

机译:基于CNN基于高光谱图像分类的基于内核的基于内核的空间上下文

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Convolutional Neural Network (CNN) has received remarkable achievements in hyperspectral image (HSI) classification. However, how to effectively implement spatial context that has been demonstrated to be crucial for classification of HSI is still an open issue. Current CNNs for hyperspectral classification are restricted into a small scale due to small-scale input and limited training samples. Therefore, in this paper, two different ways are proposed to implement both spatial context and spectral signature into CNN based classification of HSI: 1). fixed kernels in which weights are determined by prior information, i.e., mean, mean and standard deviation of pixels in a spatial neighborhood, and Gaussian kernel; 2). learnable kernels in which weights are learned from training samples, i.e., 2D learnable kernel, 3D convolutional kernel, and 2-Layer kernel. In the successive CNN for classification of HSI, dropout and batch normalization are also used to improve the classification performance of hyperspectral images under small sample conditions. Experiments on two- known HSIs demonstrating that, in the considered small-scale CNN, fixed kernels are more effective than learnable kernels to explore spatial information for classification of HSIs, especially for the case with small number of training samples.
机译:卷积神经网络(CNN)在高光谱图像(HSI)分类中获得了显着成果。但是,如何有效地实施已被证明对HSI分类至关重要的空间环境仍然是一个开放的问题。由于小规模输入和有限的训练样本,电流为高光谱分类的CNN被限制为小规模。因此,在本文中,提出了两种不同的方式来实现空间上下文和光谱签名进入基于CNN的HSI:1)的分类。固定内核,其中重量是通过先前信息确定的,即空间邻域的像素的平均值,均值和标准偏差,以及高斯内核; 2)。从训练样本中学到的学习权重,即2D学习内核,3D卷积内核和2层内核中学到的学习核。在用于分类的连续CNN中,辍学和批量标准化还用于改善小样本条件下的高光谱图像的分类性能。上两已知HSIS实验表明,在所考虑的小规模CNN,固定内核是更有效的比可学习内核探索空间信息为HSIS的分类,特别是对于具有小数量的训练样本的情况下。

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