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An experiment-based quantitative and comparative analysis of target detection and image classification algorithms for hyperspectral imagery

机译:基于实验的高光谱图像目标检测和图像分类算法的定量和比较分析

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摘要

Over the past years, many algorithms have been developed for multispectral and hyperspectral image classification. A general approach to mixed pixel classification is linear spectral unmixing, which uses a linear mixture model to estimate the abundance fractions of signatures within a mixed pixel. As a result, the images generated for classification are usually gray scale images, where the gray level value of a pixel represents a combined amount of the abundance of spectral signatures residing in this pixel. Due to a lack of standardized data, these mixed pixel algorithms have not been rigorously compared using a unified framework. The authors present a comparative study of some popular classification algorithms through a standardized HYDICE data set with a custom-designed detection and classification criterion. The algorithms to be considered for this study are those developed for spectral unmixing, the orthogonal subspace projection (OSP), maximum likelihood, minimum distance, and Fisher's linear discriminant analysis (LDA). In order to compare mixed pixel classification algorithms against pure pixel classification algorithms, the mixed pixels are converted to pure ones by a designed mixed-to-pure pixel converter. The standardized HYDICE data are then used to evaluate the performance of various pure and mixed pixel classification algorithms. Since all targets in the HYDICE image scenes can be spatially located to pixel level, the experimental results can be presented by tallies of the number of targets detected and classified for quantitative analysis.
机译:在过去的几年中,已经开发了许多用于多光谱和高光谱图像分类的算法。混合像素分类的一种通用方法是线性光谱分解,它使用线性混合模型来估计混合像素内签名的丰度分数。结果,为分类而生成的图像通常是灰度图像,其中像素的灰度值表示驻留在该像素中的大量频谱特征的组合量。由于缺乏标准化数据,因此尚未使用统一框架对这些混合像素算法进行严格比较。作者通过具有自定义设计的检测和分类标准的标准化HYDICE数据集,对一些流行的分类算法进行了比较研究。本研究要考虑的算法是针对光谱分解,正交子空间投影(OSP),最大似然,最小距离和费舍尔线性判别分析(LDA)开发的算法。为了将混合像素分类算法与纯像素分类算法进行比较,通过设计的混合纯像素转换器将混合像素转换为纯像素。然后,将标准化的HYDICE数据用于评估各种纯像素和混合像素分类算法的性能。由于HYDICE图像场景中的所有目标都可以在空间上定位到像素级别,因此可以通过对检测到的目标数量进行分类并进行定量分析来呈现实验结果。

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