Abstract

Vision perception and modelling are the essential tasks of robotic harvesting in the unstructured orchard. This paper develops a framework of visual perception and modelling for robotic harvesting of fruits in the orchard environments. The developed framework includes visual perception, scenarios mapping, and fruit modelling. The Visual perception module utilises a deep-learning model to perform multi-purpose visual perception task within the working scenarios; The scenarios mapping module applies OctoMap to represent the multiple classes of objects or elements within the environment; The fruit modelling module estimates the geometry property of objects and estimates the proper access pose of each fruit. The developed framework is implemented and evaluated in the apple orchards. The experiment results show that visual perception and modelling algorithm can accurately detect and localise the fruits, and modelling working scenarios in real orchard environments. The $F_{1}$ score and mean intersection of union of visual perception module on fruit detection and segmentation are 0.833 and 0.852, respectively. The accuracy of the fruit modelling in terms of centre localisation and pose estimation are 0.955 and 0.923, respectively. Overall, an accurate visual perception and modelling algorithm are presented in this paper.

Highlights

  • Robotic harvesting is a promising technology of agriculture in the future

  • Autonomous harvesting Robot requires to detect the fruits, estimate the pose of the fruits, calculate the path for robotic arms to pick the fruits based on surrounding environments

  • The developed visual perception and modelling algorithm was tested in controlled laboratory and orchard environments, showing a robust and efficient performance to applied in the autonomous apple harvesting

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Summary

INTRODUCTION

Robotic harvesting is a promising technology of agriculture in the future. Compared to the autonomous harvesting of the structured crops, visual-guided autonomous harvesting in unstructured orchards is more challenging [1]. Autonomous harvesting Robot requires to detect the fruits, estimate the pose of the fruits, calculate the path for robotic arms to pick the fruits based on surrounding environments. Among these challenges, robotic vision is the key to the success of the harvesting [2]. This work developed a robotic visual perception and modelling algorithm for autonomous apple harvesting. An efficient control framework which guide robot to perform autonomous harvesting is presented in this work. The developed visual perception and modelling algorithm was tested in controlled laboratory and orchard environments, showing a robust and efficient performance to applied in the autonomous apple harvesting.

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CONCLUSION
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