Evaluating the performance of a semi-automatic apple fruit detection in a high-density orchard system using low-cost digital rgb imaging sensor



Título del documento: Evaluating the performance of a semi-automatic apple fruit detection in a high-density orchard system using low-cost digital rgb imaging sensor
Revista: Boletim de ciencias geodesicas
Base de datos: PERIÓDICA
Número de sistema: 000457260
ISSN: 1413-4853
Autores: 1
1
2
1
2
3
Instituciones: 1Universidade Federal do Parana, Curitiba, Parana. Brasil
2Universidade do Estado de Santa Catarina, Departamento de Engenharia Florestal, Lages, Santa Catarina. Brasil
3Universidade do Estado de Santa Catarina, Departamento de Agronomia, Lages, Santa Catarina. Brasil
Año:
Volumen: 27
Número: 2
País: Brasil
Idioma: Inglés
Tipo de documento: Artículo
Enfoque: Analítico, descriptivo
Resumen en inglés This study investigates the potential use of close-range and low-cost terrestrial RGB imaging sensor for fruit detection in a high-density apple orchard of Fuji Suprema apple fruits (Malus domestica Borkh). The study area is a typical orchard located in a small holder farm in Santa Catarina’s Southern plateau (Brazil). Small holder farms in that state are responsible for more than 50% of Brazil’s apple fruit production. Traditional digital image processing approaches such as RGB color space conversion (e.g., rgb, HSV, CIE L*a*b*, OHTA[I 1 , I 2 , I 3 ]) were applied over several terrestrial RGB images to highlight information presented in the original dataset. Band combinations (e.g., rgb-r, HSV-h, Lab-a, I” 2 , I” 3 ) were also generated as additional parameters (C1, C2 and C3) for the fruit detection. After, optimal image binarization and segmentation, parameters were chosen to detect the fruits efficiently and the results were compared to both visual and in-situ fruit counting. Results show that some bands and combinations allowed hits above 75%, of which the following variables stood out as good predictors: rgb-r, Lab-a, I” 2 , I” 3 , and the combinations C2 and C3. The best band combination resulted from the use of Lab-a band and have identical results of commission, omission, and accuracy, being 5%, 25% and 75%, respectively. Fruit detection rate for Lab-a showed a 0.73 coefficient of determination (R2), and fruit recognition accuracy rate showed 0.96 R2. The proposed approach provides results with great applicability for small holder farms and may support local harvest prediction
Disciplinas: Geografía,
Agrociencias
Palabras clave: Cartografía,
Frutales,
Detección semiautomática,
Malus domestica,
Fruticultura
Keyword: Cartography,
Fruit trees,
Remote sensing,
Semi-automatic detection,
Malus domestica,
Fruticulture
Texto completo: Texto completo (Ver HTML) Texto completo (Ver PDF)