Fully connected-convolutional (FC-CNN) neural network based on hyperspectral images for rapid identification of P. ginseng growth years
P. ginseng is a precious traditional Chinese functional food, which is used for both medicinal and food purposes, and has various effects such as immunomodulation, anti-tumor and anti-oxidation. The growth year of P. ginseng has an important impact on its medicinal and economic values. Fast and nond...
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Veröffentlicht in: | Scientific reports 2024-03, Vol.14 (1), p.7209-7209, Article 7209 |
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Sprache: | eng |
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Zusammenfassung: | P. ginseng
is a precious traditional Chinese functional food, which is used for both medicinal and food purposes, and has various effects such as immunomodulation, anti-tumor and anti-oxidation. The growth year of
P. ginseng
has an important impact on its medicinal and economic values. Fast and nondestructive identification of the growth year of
P. ginseng
is crucial for its quality evaluation. In this paper, we propose a FC-CNN network that incorporates spectral and spatial features of hyperspectral images to characterize
P. ginseng
from different growth years. The importance ranking of the spectra was obtained using the random forest method for optimal band selection. Based on the hyperspectral reflectance data of
P. ginseng
after radiometric calibration and the images of the best five VNIR bands and five SWIR bands selected, the year-by-year identification of
P. ginseng
age and its identification experiments for food and medicinal purposes were conducted, and the FC-CNN network and its FCNN and CNN branch networks were tested and compared in terms of their effectiveness in the identification of
P. ginseng
growth years. It has been experimentally verified that the best year-by-year recognition was achieved by utilizing images from five visible and near-infrared important bands and all spectral curves, and the recognition accuracy of food and medicinal use reached 100%. The FC-CNN network is significantly better than its branching model in the effect of edible and medicinal identification. The results show that for
P. ginseng
growth year identification, VNIR images have much more useful information than SWIR images. Meanwhile, the FC-CNN network utilizing the spectral and spatial features of hyperspectral images is an effective method for the identification of
P. ginseng
growth year. |
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ISSN: | 2045-2322 2045-2322 |
DOI: | 10.1038/s41598-024-57904-3 |