Abstract

The agriculture sector in Jordan depends very much on planting the olive trees. More than ten million of olive trees are planted in the Jordanian soil. Olive fruit are harvested for two purposes; either to produce oil or to produce olive table (pickled olive). Olive fruit harvesting time for extracting the oil from the olive fruit is crucial. Hence, harvesting the olive fruit on ripping time gives the best amount and quality of oil. It also, could lose 15% to 20% of multiple values because of harvesting time. Olive fruit ripping time is varied since it depends on the rainfall, temperature and cultivation. A system to predict the optimal time for harvesting olive fruit for producing oil only is introduced. It based one Digital Image Processing (DIP) and artificial intelligent neural network. Moreover, four features were extracted from the olive fruit image based on the red, green and blue colors. The proposed system tested olive fruits in three stages of ripping time; under ripping, on ripping and over ripping. The classification accuracy achieved in the three stages was 97.51% in under ripping stage 95.10% in ripping stage, and 96.12% in over ripping stage. The proposed system performance was 96.14%.

Highlights

  • Olive tree is the most important tree in Jordan

  • As an additional authenticates opinion researchers have proposed different methods like analytical static [7] and intelligent system based on Digital Image Processing (DIP) and Artificial Intelligent (AI) and Artificial Neural Networks (ANN)

  • The results show that the Cascade Forward Neural Network (CFNN) classified the olive fruit on under ripping stage with 99.10% for training data and 97.51% for testing data

Read more

Summary

Introduction

Olive tree is the most important tree in Jordan. It represents 70% of the fruit tree in the country [1]. By harvesting the olive trees on the ripping time, the best amount and quality of olive oil can be achieved [3]. Harvesting the olive tree before or after ripping time, reflects the quality grade of oil characteristics, oxidation, stability and nasturtium value of the obtained product [4]. In the Harvesting olive fruit season, the farmers attempt to estimate ripping time based on the color, texture, size and shape of the fruits. This estimation can be done by walking through the olive tree field. As an additional authenticates opinion researchers have proposed different methods like analytical static [7] and intelligent system based on Digital Image Processing (DIP) and Artificial Intelligent (AI) and Artificial Neural Networks (ANN). The new model relies on Digital Image Processing and Neural Network

Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call