A Method for Estimating Fluorescence Emission Spectra from the Image Data of Plant Grain and Leaves Without a Spectrometer.

IF 2.7 Q3 IMAGING SCIENCE & PHOTOGRAPHIC TECHNOLOGY Journal of Imaging Pub Date : 2025-01-21 DOI:10.3390/jimaging11020030
Shoji Tominaga, Shogo Nishi, Ryo Ohtera, Hideaki Sakai
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Abstract

This study proposes a method for estimating the spectral images of fluorescence spectral distributions emitted from plant grains and leaves without using a spectrometer. We construct two types of multiband imaging systems with six channels, using ordinary off-the-shelf cameras and a UV light. A mobile phone camera is used to detect the fluorescence emission in the blue wavelength region of rice grains. For plant leaves, a small monochrome camera is used with additional optical filters to detect chlorophyll fluorescence in the red-to-far-red wavelength region. A ridge regression approach is used to obtain a reliable estimate of the spectral distribution of the fluorescence emission at each pixel point from the acquired image data. The spectral distributions can be estimated by optimally selecting the ridge parameter without statistically analyzing the fluorescence spectra. An algorithm for optimal parameter selection is developed using a cross-validation technique. In experiments using real rice grains and green leaves, the estimated fluorescence emission spectral distributions by the proposed method are compared to the direct measurements obtained with a spectroradiometer and the estimates obtained using the minimum norm estimation method. The estimated images of fluorescence emissions are presented for rice grains and green leaves. The reliability of the proposed estimation method is demonstrated.

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一种无需光谱仪即可从植物谷粒和叶片图像数据中估算荧光发射光谱的方法。
本研究提出了一种无需光谱仪即可估计植物颗粒和叶片发出的荧光光谱分布的光谱图像的方法。我们构建了两种类型的六通道多波段成像系统,使用普通的现成的相机和紫外光。利用手机摄像头对米粒蓝色波长区域的荧光发射进行检测。对于植物叶片,使用一个小型单色相机和额外的光学滤光片来检测红色到远红色波长区域的叶绿素荧光。采用脊回归方法,从获取的图像数据中获得荧光发射在每个像素点的光谱分布的可靠估计。在不进行荧光光谱统计分析的情况下,可以通过优化脊参数来估计光谱分布。利用交叉验证技术,提出了一种优化参数选择算法。在实际水稻和绿叶实验中,将该方法估计的荧光发射光谱分布与光谱辐射计直接测量结果和最小范数估计方法估计的荧光发射光谱分布进行了比较。给出了水稻粒和绿叶的荧光发射估计图像。验证了所提估计方法的可靠性。
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来源期刊
Journal of Imaging
Journal of Imaging Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
5.90
自引率
6.20%
发文量
303
审稿时长
7 weeks
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