Embedding a Real-Time Strawberry Detection Model into a Pesticide-Spraying Mobile Robot for Greenhouse Operation

Author:

El Amraoui Khalid1ORCID,El Ansari Mohamed2ORCID,Lghoul Mouataz1,El Alaoui Mustapha1,Abanay Abdelkrim3ORCID,Jabri Bouazza1,Masmoudi Lhoussaine1ORCID,Valente de Oliveira José45ORCID

Affiliation:

1. LCS Laboratory, Physics Department, Faculty of Sciences, Mohammed 5 University in Rabat, Ibn Battouta Street, Rabat 10000, Morocco

2. Informatics and Applications Laboratory, Faculty of Science, Moulay Ismail University in Meknes, Zitoune Street, Meknes 11201, Morocco

3. IRSM, High Institute of Management, Administration, and Computer Engineering (ISMAGI), Rabat 10120, Morocco

4. Faculty of Science and Technology, Campus de Gambelas, Universidade do Algarve, 8005-391 Faro, Portugal

5. NOVA-LINCS, and Center of Intelligent Systems, IDMEC/LAETA, University of Lisbon, 1049-001 Lisboa, Portugal

Abstract

The real-time detection of fruits and plants is a crucial aspect of digital agriculture, enhancing farming efficiency and productivity. This study addresses the challenge of embedding a real-time strawberry detection system in a small mobile robot operating within a greenhouse environment. The embedded system is based on the YOLO architecture running in a single GPU card, with the Open Neural Network Exchange (ONNX) representation being employed to accelerate the detection process. The experiments conducted in this study demonstrate that the proposed model achieves a mean average precision (mAP) of over 97%, processing eight frames per second for 512 × 512 pixel images. These results affirm the utility of the proposed approach in detecting strawberry plants in order to optimize the spraying process and avoid inflicting any harm on the plants. The goal of this research is to highlight the potential of integrating advanced detection algorithms into small-scale robotics, providing a viable solution for enhancing precision agriculture practices.

Funder

Ministry of Higher Education, Scientific Research and Innovation of Morocco

National Centre of Scientific and Technical Research of Morocco

Digital Development Agency of Morocco (ADD) through the AL-KHAWARIZMI program of Morocco

NOVA LINCS

FCT.IP

Publisher

MDPI AG

Reference55 articles.

1. Food and Agriculture Organization of the United Nations (2017). The Future of Food and Agriculture: Trends and Challenges, Food and Agriculture Organization of the United Nations.

2. (2024, February 06). Morocco—GDP Distribution Across Economic Sectors 2012–2022. Statista. Available online: https://www.statista.com/statistics/502771/morocco-gdp-distribution-across-economic-sectors/.

3. (2024, February 06). Morocco: Food Share in Merchandise Exports. Statista. Available online: https://www.statista.com/statistics/1218971/food-share-in-merchandise-exports-in-morocco/.

4. Oluwole, V. (2024, February 06). Morocco’s Fresh Strawberry Exports Generate up to $70 Million in Annual Revenue. Available online: https://africa.businessinsider.com/local/markets/moroccos-fresh-strawberry-exports-generate-up-to-dollar70-million-in-annual-revenue/yrkgkzv.

5. Crop pest recognition in natural scenes using convolutional neural networks;Li;Comput. Electron. Agric.,2020

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