Automated Chinese medicinal plants classification based on machine learning using leaf morpho-colorimetry, fractal dimension and visible/near infrared spectroscopy
Abstract
Keywords: ampelography, computer vision, artificial neural networks, pattern recognition, Chinese medicinal plants
DOI: 10.25165/j.ijabe.20191202.4637
Citation: Xue J R, Fuentes S, Poblete-Echeverria C, Viejo C G, Tongson E, Du H J, et al. Automated Chinese medicinal plants classification based on machine learning using leaf morpho-colorimetry, fractal dimension and visible/near infrared spectroscopy. Int J Agric & Biol Eng, 2019; 12(2): 123–131.
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