Approaches for Hyperspectral Image Classification Detailed Review

Kushalatha M R, Prasantha H S, Beena. R. Shetty
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引用次数: 1

Abstract

Hyperspectral Image (HSI) processing is the new advancement in image / signal processing field. The growth over the years is appreciable. The main reason behind the successful growth of the Hyperspectral imaging field is due to the enormous amount of spectral and spatial information that the imagery contains. The spectral band that the HSI which contains is also more in number. When an image is captured through the HSI cameras, it contains around 200-250 images of the same scene. Nowadays HSI is used extensively in the fields of environmental monitoring, Crop-Field monitoring, Classification, Identification, Remote sensing applications, Surveillance etc. The spectral and spatial information content present in Hyperspectral images are with high resolutions.Hyperspectral imaging has shown significant growth and widely used in most of the remote sensing applications due to its presence of information of a scene over hundreds of contiguous bands In. Hyperspectral Image Classification of materials is the critical application of HSI using Hyperspectral sensors. It collects hundreds of spectrum channels, where each channel consists of a sharp point of Electromagnetic Spectrum. The paper mainly focuses on Deep Learning techniques such as Convolutional Neural Network (CNN), Artificial Neural Network (ANN), and Support Vector machines (SVM), K-Nearest Neighbour (KNN) for the accuracy in classification. Finally in the summary the current state-of-the-art scheme, a critical discussion after reviewing the research work by other professionals and organizing it into review-based paper, also implying about the present status on classification accuracy using neural networks is carried out.
高光谱图像分类方法综述
高光谱图像(HSI)处理是图像/信号处理领域的新进展。这些年来的增长是可观的。高光谱成像领域成功发展的主要原因是由于图像包含了大量的光谱和空间信息。恒生指数所包含的光谱波段也较多。当一张图像通过HSI相机拍摄时,它包含大约200-250张相同场景的图像。目前,HSI已广泛应用于环境监测、农田监测、分类识别、遥感应用、监测等领域。高光谱图像呈现的光谱和空间信息含量具有较高的分辨率。高光谱成像技术由于能够提供数百个连续波段的场景信息,在大多数遥感应用中得到了显著的发展和广泛的应用。材料的高光谱图像分类是高光谱传感器在高光谱成像中的关键应用。它收集了数百个频谱通道,其中每个通道由一个尖锐的电磁频谱点组成。本文主要研究了卷积神经网络(CNN)、人工神经网络(ANN)、支持向量机(SVM)、k近邻(KNN)等深度学习技术对分类精度的影响。最后总结了当前的研究方案,在回顾了其他专业人员的研究工作并将其组织成基于综述的论文后进行了批判性的讨论,也暗示了使用神经网络进行分类精度的现状。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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