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Effects of linear projections on the performance of target detection and classification in hyperspectral imagery

机译:线性投影对高光谱图像目标检测和分类性能的影响

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摘要

We explore the use of several linear dimensionality reduction techniques that can be easily integrated into the hyperspectral imaging sensor. We investigate their effect on the performance of classical target detection and classification techniques for hyperspectral images. Specifically, each N-dimensional spectral pixel is embedded to an M-dimensional measurement space with M N by a linear transformation (e.g., random measurement matrices, uniform downsampling, principal component analysis). The detectors/classifiers are then applied to the M-dimensional measurement vectors and their performances are compared to those obtained from the entire N-dimensional spectrum. Through extensive experiments on several hyperspectral imagery data sets, we demonstrate that only a small amount of measurements are necessary to achieve comparable performance to that obtained by exploiting the full N-dimensional pixels.
机译:我们探索了几种线性降维技术的使用,这些技术可以轻松地集成到高光谱成像传感器中。我们研究了它们对经典目标检测和高光谱图像分类技术性能的影响。具体地,通过线性变换(例如,随机测量矩阵,均匀下采样,主成分分析)将每个N维光谱像素嵌入到M≤N的M维测量空间中。然后将检测器/分类器应用于M维测量向量,并将其性能与从整个N维频谱获得的性能进行比较。通过在几个高光谱图像数据集上进行的广泛实验,我们证明仅需少量测量就可实现与通过利用整个N维像素获得的性能相当的性能。

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