Resumen
A correct cocoa harvest involves determining a pod maturity. However, this farm activity is usually handmade, using criteria such as Size and Color of the pod; those characteristics differ according to the cocoa variety, making it difficult to standardize. For this reason, this work proposes an automated method to simplify the number of variables to develop a portable, low-cost, and custom-made tool, which makes use of a convolutional neural network to indicate whether a cocoa pod is found it at the right time to harvest. The main results of this work are: 1) the construction of three labeled data sets (1992 images each), and 2) we developed an embedded system with a 34.83% mAP (mean Average Precision) accuracy. Finally, variance analysis demonstrates that image size (i.e., 4033x4033 p, 1009x1009 p, and 505x505 p) does not affect accuracy.
Título traducido de la contribución | Cocoa pods ripeness estimation, using convolutional neural networks in an embedded system |
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Idioma original | Español |
Páginas (desde-hasta) | 42-55 |
Número de páginas | 14 |
Publicación | Revista Colombiana de Computación |
Volumen | 21 |
N.º | 2 |
DOI | |
Estado | Publicada - jul. 2020 |
Publicado de forma externa | Sí |
Palabras clave
- Cocoa
- Image classification
- Image recognition
- Object detection
- Raspberry pi
- Ripeness
- YOLO