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Título
A stereoscopic video computer vision system for weed discrimination in rice field under both natural and controlled light conditions by machine learning
Autor(es)
Palabras clave
Meta-heuristic algorithms
Neural network (NN)
Optimization
Stereo vision
Clasificación UNESCO
3304.05 Sistemas de Reconocimiento de Caracteres
3102.01 Mecanización Agrícola
3311.02 Ingeniería de Control
Fecha de publicación
2024-09-30
Editor
Elsevier
Citación
Dadashzadeh, M., Abbaspour-Gilandeh, Y., Mesri-Gundoshmian, T., Sabzi, S., y Arribas, J. I. (2024). A stereoscopic video computer vision system for weed discrimination in rice field under both natural and controlled light conditions by machine learning. Measurement, 237, 115072. https://doi.org/10.1016/j.measurement.2024.115072
Resumen
[EN] A site-specific weed detection and classification system was implemented with a stereoscopic video camera to reduce the adverse effects of chemical herbicides in rice field. A computer vision and meta-heuristic hybrid NN-ICA classifier were used to accurately discriminate between two weed varieties and rice plants, under either natural light (NLC) or controlled light conditions (CLC). Preprocessing, segmentation, and matching procedures were performed on images coming from either right or left camera channels. Most discriminant features were selected from average, either arithmetic or geometric, images using a NN-PSO algorithm. Accuracy classification results with the stereo computer vision system under NLC were 85.71 % for the arithmetic mean (AM) and 85.63 % for the geometric mean (GM), test set. At the same time, accuracy classification results of the computer vision system under CLC reached 96.95 % for the AM case and 94.74 % for the GM case, being consistently higher than those under NLC.
URI
ISSN
0263-2241
DOI
10.1016/j.measurement.2024.115072
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