利用遗传算法和折叠线性判别分析的新型混合降维方法应用于高光谱成像,实现有效的水稻种子分类

Samson Damilola Fabiyi;Paul Murray;Jaime Zabalza;Christos Tachtatzis;Hai Vu;Trung-Kien Dao
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摘要

据报道,高光谱成像(HSI)在水稻种子分类方面取得了可喜的成果。然而,高光谱成像数据通常需要使用降维技术来去除冗余数据。折叠线性判别分析(F-LDA)是线性判别分析(LDA,一种常用的降维技术)的扩展,最近被提出来解决 LDA 的局限性,特别是在处理少量训练样本时性能较差的问题,而这正是 HSI 应用中的常见情况。本文介绍了 F-LDA 的改进版本,探讨了遗传算法(GA)与 F-LDA 混合使用的可行性,以便在基于 HSI 的水稻种子分类中有效降维。受之前将遗传算法与原理成分分析相结合的启发,所提出的方法在包含 256 个光谱带的水稻种子数据集上进行了评估。实验结果表明,这种 GA 与 F-LDA 的新组合(GA + F-LDA)除了能获得高达 96.21% 的分类准确率外,还能进一步降低独立 F-LDA 的计算复杂度和内存需求。值得注意的是,与标准 F-LDA 的分类准确率(高达 96.99%)相比,这些优点并没有使分类准确率略有下降。
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A New Hybridized Dimensionality Reduction Approach Using Genetic Algorithm and Folded Linear Discriminant Analysis Applied to Hyperspectral Imaging for Effective Rice Seed Classification
Hyperspectral imaging (HSI) has been reported to produce promising results in the classification of rice seeds. However, HSI data often require the use of dimensionality reduction techniques for the removal of redundant data. Folded linear discriminant analysis (F-LDA) is an extension of linear discriminant analysis (LDA, a commonly used technique for dimensionality reduction), and was recently proposed to address the limitations of LDA, particularly its poor performance when dealing with a small number of training samples which is a usual scenario in HSI applications. This article presents an improved version of F-LDA, exploring the feasibility of hybridizing a genetic algorithm (GA) and F-LDA for effective dimensionality reduction in HSI-based rice seeds classification. The proposed approach, inspired by the previous combination of GA with principle component analysis, is evaluated on rice seed datasets containing 256 spectral bands. Experimental results show that, in addition to attaining promising classification accuracies of up to 96.21%, this novel combination of GA and F-LDA (GA + F-LDA) can further reduce the computational complexity and memory requirement in the standalone F-LDA. It is worth noting that these benefits are not without a slight reduction in classification accuracy when evaluated against those reported for the standard F-LDA (up to 96.99%).
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2024 Index IEEE Transactions on AgriFood Electronics Vol. 2 Table of Contents Front Cover IEEE Circuits and Systems Society Information IEEE Circuits and Systems Society Information
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