Deep learning supported machine vision system to precisely automate the wild blueberry harvester header

Author:

Haydar Zeeshan,Esau Travis J.,Farooque Aitazaz A.,Zaman Qamar U.,Hennessy Patrick J.,Singh Kuljeet,Abbas Farhat

Abstract

AbstractAn operator of a wild blueberry harvester faces the fatigue of manually adjusting the height of the harvester’s head, considering spatial variations in plant height, fruit zone, and field topography affecting fruit yield. For stress-free harvesting of wild blueberries, a deep learning-supported machine vision control system has been developed to detect the fruit height and precisely auto-adjust the header picking teeth rake position. The OpenCV AI Kit (OAK-D) was used with YOLOv4-tiny deep learning model with code developed in Python to solve the challenge of matching fruit heights with the harvester’s head position. The system accuracy was statistically evaluated with R2 (coefficient of determination) and σ (standard deviation) measured on the difference in distances between the berries picking teeth and average fruit heights, which were 72, 43% and 2.1, 2.3 cm for the auto and manual head adjustment systems, respectively. This innovative system performed well in weed-free areas but requires further work to operate in weedy sections of the fields. Benefits of using this system include automated control of the harvester’s head to match the header picking rake height to the level of the fruit height while reducing the operator’s stress by creating safer working environments.

Publisher

Springer Science and Business Media LLC

Subject

Multidisciplinary

Reference50 articles.

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3. McIssac, D. & Reid, S. Wild blueberry production and marketing in Nova Scotia: A situation report 2000. Retrieved October 5, 2008 (2000).

4. Farooque, A. A. et al. Effect of ground speed and header revolutions on the picking efficiency of a commercial wild blueberry harvester. Appl. Eng. Agric. 30, 535–546 (2014).

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