Open Access Open Access  Restricted Access Subscription Access

Evaluation of Image Segmentation and Filtering With Ann in the Papaya Leaf


Affiliations
1 Department of Computing, UNEMAT, Colider, MT, Brazil
2 Department of Electrical Engineering, UNESP, Ilha Solteira, SP, Brazil
 

Precision agriculture is area with lack of cheap technology. The refinement of the production system brings large advantages to the producer and the use of images makes the monitoring a more cheap methodology. Macronutrients monitoring can to determine the health and vulnerability of the plant in specific stages. In this paper is analyzed the method based on computational intelligence to work with image segmentation in the identification of symptoms of plant nutrient deficiency. Artificial neural networks are evaluated for image segmentation and filtering, several variations of parameters and insertion impulsive noise were evaluated too. Satisfactory results are achieved with artificial neural for segmentation same with high noise levels.

Keywords

Artificial Neural Network, Segmentation, Filtering, Papaya, Precision Agriculture.
User
Notifications
Font Size

Abstract Views: 304

PDF Views: 148




  • Evaluation of Image Segmentation and Filtering With Ann in the Papaya Leaf

Abstract Views: 304  |  PDF Views: 148

Authors

Maicon A. Sartin
Department of Computing, UNEMAT, Colider, MT, Brazil
Alexandre C. R. da Silva
Department of Electrical Engineering, UNESP, Ilha Solteira, SP, Brazil

Abstract


Precision agriculture is area with lack of cheap technology. The refinement of the production system brings large advantages to the producer and the use of images makes the monitoring a more cheap methodology. Macronutrients monitoring can to determine the health and vulnerability of the plant in specific stages. In this paper is analyzed the method based on computational intelligence to work with image segmentation in the identification of symptoms of plant nutrient deficiency. Artificial neural networks are evaluated for image segmentation and filtering, several variations of parameters and insertion impulsive noise were evaluated too. Satisfactory results are achieved with artificial neural for segmentation same with high noise levels.

Keywords


Artificial Neural Network, Segmentation, Filtering, Papaya, Precision Agriculture.