Vladimir Henao-Céspedes, Oscar Cardona-Morales, Jolián Andrés Vargas-Alzate, Julián Ricardo León-Zuleta, Eddy Mackniven Guzman-Buendia, Yeison Alberto Garcés-Gómez
Optical Engineering, Vol. 63, Issue 06, 064103, (June 2024) https://doi.org/10.1117/1.OE.63.6.064103
TOPICS: Reflectivity, Mathematical optimization, Shadows, Optical engineering, Machine learning, Satellites, Education and training, Satellite imaging, Principal component analysis, Data modeling
By classifying crops using machine learning approaches, it is possible to determine if the spectral signatures of several variations of the same species differ from one another. This allows for the correlation of the spectral signatures with key properties of the finished product. The final cannabinoid content of a certain species is a crucial quality attribute that might raise the crop’s value in the case of Cannabis growing. In contrast to conventional cutting and laboratory analysis approaches, the classification of Cannabis varietals from spectral signatures is proposed as a nondestructive process. The findings demonstrate that a random forest classification algorithm optimized on hyparameters can classify four types of Cannabis grown in Colombia with a multiclass accuracy of 95.6% using the spectral signature. These findings will make it possible to determine whether the spectral signature is related to the cannabinoid content of the various kinds, which is crucial for medical purposes.