Abstract

In order to improve the harvesting efficiency of apple harvesting robot, this article presents an apple recognition method based on pulse coupled neural network and genetic Elman neural network (GA-Elman). Firstly, we use pulse coupled neural network to segment the captured 150 images, respectively, and extract six color features of R, G, B, H, S, and I and 10 shape features of circular variance, density, the ratio of perimeter square to area, and Hu invariant moments of segmented images, and these 16 features are considered as the inputs of Elman neural network. In order to overcome some defects of Elman neural network, such as, trapping local minimum easily and determining the number of hidden neurons difficultly; in this article, genetic algorithm is introduced to optimize it, and new optimization way is designed, that is, the connection weights and number of hidden neurons separate encoding and evolving simultaneously, in the process of structural evolution at the same time the learning of connection weights is completed, and then the operating efficiency and recognition precision of Elman model are improved. In order to get more precision neural network, and avoid the influence of fruit recognition caused by branches or leaves shadow, apple along with branches and leaves is allowed to train. The results of experiments show that compared with the traditional back-propagation, Elman neural network, and other two recognition algorithms of obscured fruit. the genetic Elman neural network algorithm is the optimal method which successful training rate can reach to 100%, recognition rate of overlapping fruit and obscured fruit can reach to 88.67% and 93.64%, respectively, and the total recognition rate reaches to 94.88%.

Highlights

  • With the advancement of science and technology, robotics technology has gradually matured, and apple harvesting robot makes rapid growth.[1,2] Apple harvesting robot is relatively complex, and the working environment of the visual system as the “eyes” of harvesting robot is a key technology of harvesting robot intelligence

  • For the single unobscured fruit, the recognition rates all of this three models are more than 99%, the neural network recognition algorithm is suitable for apple fruit recognition

  • From the recognition effect point of view, for the single unobscured fruit, the recognition rate of the three models is greater than 99%, so the neural network recognition algorithm is suitable for apple fruit recognition

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Summary

Introduction

With the advancement of science and technology, robotics technology has gradually matured, and apple harvesting robot makes rapid growth.[1,2] Apple harvesting robot is relatively complex, and the working environment of the visual system as the “eyes” of harvesting robot is a key technology of harvesting robot intelligence. Keywords Apple harvesting robot, PCNN segmentation, GA-Elman neural network, fruit recognition

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