1. Classification of bee pollen grains using hyperspectral microscopy imaging and Fisher linear classifier
- Author
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Anming Li, Migao Li, Lin Wei, Zhen Li, Zhenqiang Chen, Pingping Ye, Hao Yin, Siqi Zhu, and Kang Su
- Subjects
0301 basic medicine ,Contextual image classification ,Pixel ,010401 analytical chemistry ,General Engineering ,Hyperspectral imaging ,Linear classifier ,Image segmentation ,01 natural sciences ,Atomic and Molecular Physics, and Optics ,0104 chemical sciences ,Data set ,03 medical and health sciences ,030104 developmental biology ,Region of interest ,Bee pollen ,Remote sensing ,Mathematics - Abstract
The rapid and accurate classification of bee pollen grains is still a challenge. The purpose of this paper is to develop a method which could directly classify bee pollen grains based on fluorescence spectra. Bee pollen grain samples of six species were excited by a 409-nm laser diode source, and their fluorescence images were acquired by a hyperspectral microscopy imaging (HMI) system. One hundred pixels in the region of interest were randomly selected from each single bee pollen species. The fluorescence spectral information in all the selected pixels was stored in an n-dimensional hyperspectral data set, where n=37 for a total of 37 hyperspectral bands (465 to 645 nm). The hyperspectral data set was classified using a Fisher linear classifier. The performance of the Fisher linear classifier was measured by the leave-one-out cross-validation method, which yielded an overall accuracy of 89.2%. Finally, additional blinded samples were used to evaluate the established classification model, which demonstrated that bee pollen mixtures could be classified efficiently with the HMI system.
- Published
- 2016
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