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Dimensionality Reduction and Classification of Hyperspectral Images Using Object-Based Image Analysis

机译:基于对象的图像分析的维度降低和分类高光谱图像

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Object-based image analysis (OBIA) has attained great importance for the delineation of landscape features, particularly with the accessibility to satellite images with high spatial resolution acquired by recent sensors. Statistical parametric classifiers have become ineffective mainly due to their assumption of normal distribution, vast increase in the dimensions of the data and availability of limited ground sample data. Despite pixel-based approaches, OBIA takes semantic information of extracted image objects into consideration, and thus provides more comprehensive image analysis. In this study, Indian Pines hyperspectral data set, which was recorded by the AVIRIS hyperspectral sensor, was used to analyse the effects of high dimensional data with limited ground reference data. To avoid the dimensionality curse, principal component analysis (PCA) and feature selection based on Jeffries-Matusita (JM) distance were utilized. First 19 principal components representing 98.5% of the image were selected using the PCA technique whilst 30 spectral bands of the image were determined using JM distance. Nearest neighbour (NN) and random forest (RF) classifiers were employed to test the performances of pixel- and object-based classification using conventional accuracy metrics. It was found that object-based approach outperformed the traditional pixel-based approach for all cases (up to 18% improvement). Also, the RF classifier produced significantly more accurate results (up to 10%) than the NN classifier.
机译:基于对象的图像分析(OBIA)对横向特征的描绘非常重要,特别是卫星图像的可访问性,最近传感器获得的高空间分辨率。统计参数分类器主要是无效的,主要是由于它们对正态分布的假设,数据的尺寸增加以及有限地样品数据的可用性的巨大增加。尽管基于像素的方法,但OBIA考虑了提取的图像对象的语义信息,从而提供更全面的图像分析。在本研究中,使用Aviris Hyperspectral传感器记录的印度松树高光谱数据集用于分析高维数据与有限地参考数据的影响。为避免维度诅咒,基于Jeffries-Matusita(JM)距离的主成分分析(PCA)和特征选择。使用PCA技术选择表示98.5%图像的第一19个主组件,而使用JM距离确定图像的30个光谱带。使用最近的邻居(NN)和随机森林(RF)分类器来测试使用传统的精度度量来测试像素和基于对象的分类的性能。发现基于对象的方法表现出所有情况的传统像素的方法(高达18%的改进)。此外,RF分类器产生比NN分类器更精确的结果(高达10%)。

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