A Multidimensional Pixel-wise Convolutional Neural Network for Hyperspectral Image Classification

Yeahia Sarker, S. Fahim, S. Sarker, F. Badal, S. Das, Md. Nazrul Islam Mondal
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引用次数: 9

Abstract

This paper presents a novel multidimensional pixel-wise convolutional neural network (MPCNN) to extract spatial and spectral-spatial information from the hyperspectral image (HSI). A hyperspectral image consists of narrow spatial and spectral band information based on the nature of visible materials and infrared regions of the electromagnetic spectrum. The release electromagnetic energy from visible material makes the specific wavelength which is used to classify the objects. The classification of hyperspectral image is one of the challenging task due to its narrow band energy formation. In this paper, we propose a MPCNN algorithm for classification of HSI based on two and three dimensional pixel-wise information. The term pixel defines the spectral vectors of proposed MPCNN that represents the ground material's energy radiation to the entire detection bands. This is done by using the convolutional neural network (CNN) to obtain spectral-spatial semantic feature information of hyperspectral image. The effectiveness of the proposed MPCNN is measured by classifying the objects in spatial and spectral-spatial domain and compared with different traditional CNN methods. The comparison result shows that the proposed MPCNN algorithm is capable to classify the hyperspectral image with 99.09% accuracy, while the MS-CLBP method achieves 91.51% accuracy.
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用于高光谱图像分类的多维逐像素卷积神经网络
本文提出了一种新的多维逐像素卷积神经网络(MPCNN),用于从高光谱图像(HSI)中提取空间和光谱空间信息。高光谱图像由基于可见物质性质和电磁波谱红外区域的狭窄空间和光谱波段信息组成。可见物质释放的电磁能量产生特定波长,用于对物体进行分类。高光谱图像由于其窄带能量的形成,分类是一项具有挑战性的任务。在本文中,我们提出了一种基于二维和三维像素信息的MPCNN HSI分类算法。术语像素定义了所提出的MPCNN的光谱向量,表示地面材料对整个探测波段的能量辐射。该方法利用卷积神经网络(CNN)获取高光谱图像的光谱空间语义特征信息。通过对目标在空间域和光谱空间域进行分类,并与不同的传统CNN方法进行比较,验证了该方法的有效性。对比结果表明,MPCNN算法对高光谱图像的分类准确率为99.09%,而MS-CLBP方法的分类准确率为91.51%。
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