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Featured researches published by Simon Pearson.


Sensors | 2018

Machine Learning in Agriculture: A Review

Konstantinos Liakos; Patrizia Busato; Dimitrios Moshou; Simon Pearson; Dionysis Bochtis

Machine learning has emerged with big data technologies and high-performance computing to create new opportunities for data intensive science in the multi-disciplinary agri-technologies domain. In this paper, we present a comprehensive review of research dedicated to applications of machine learning in agricultural production systems. The works analyzed were categorized in (a) crop management, including applications on yield prediction, disease detection, weed detection crop quality, and species recognition; (b) livestock management, including applications on animal welfare and livestock production; (c) water management; and (d) soil management. The filtering and classification of the presented articles demonstrate how agriculture will benefit from machine learning technologies. By applying machine learning to sensor data, farm management systems are evolving into real time artificial intelligence enabled programs that provide rich recommendations and insights for farmer decision support and action.


intelligent robots and systems | 2016

Can you pick a broccoli? 3D-vision based detection and localisation of broccoli heads in the field

Keerthy Kusumam; Tomas Krajnik; Simon Pearson; Grzegorz Cielniak; Tom Duckett

This paper presents a 3D vision system for robotic harvesting of broccoli using low-cost RGB-D sensors. The presented method addresses the tasks of detecting mature broccoli heads in the field and providing their 3D locations relative to the vehicle. The paper evaluates different 3D features, machine learning and temporal filtering methods for detection of broccoli heads. Our experiments show that a combination of Viewpoint Feature Histograms, Support Vector Machine classifier and a temporal filter to track the detected heads results in a system that detects broccoli heads with 95.2% precision. We also show that the temporal filtering can be used to generate a 3D map of the broccoli head positions in the field.


Journal of Field Robotics | 2017

3D‐vision based detection, localization, and sizing of broccoli heads in the field

Keerthy Kusumam; Tomas Krajnik; Simon Pearson; Tom Duckett; Grzegorz Cielniak

This paper describes a 3D vision system for robotic harvesting of broccoli using low-cost RGB-D sensors, which was developed and evaluated using sensory data collected under real-world field conditions in both the UK and Spain. The presented method addresses the tasks of detecting mature broccoli heads in the field and providing their 3D locations relative to the vehicle. The paper evaluates different 3D features, machine learning, and temporal filtering methods for detection of broccoli heads. Our experiments show that a combination of Viewpoint Feature Histograms, Support Vector Machine classifier, and a temporal filter to track the detected heads results in a system that detects broccoli heads with high precision. We also show that the temporal filtering can be used to generate a 3D map of the broccoli head positions in the field. Additionally, we present methods for automatically estimating the size of the broccoli heads, to determine when a head is ready for harvest. All of the methods were evaluated using ground-truth data from both the UK and Spain, which we also make available to the research community for subsequent algorithm development and result comparison. Cross-validation of the system trained on the UK dataset on the Spanish dataset, and vice versa, indicated good generalization capabilities of the system, confirming the strong potential of low-cost 3D imaging for commercial broccoli harvesting.


Sustainability | 2018

Earth Observation-Based Operational Estimation of Soil Moisture and Evapotranspiration for Agricultural Crops in Support of Sustainable Water Management

George P. Petropoulos; Prashant K. Srivastava; Maria Piles; Simon Pearson


international conference on robotics and automation | 2018

3D Soil Compaction Mapping through Kriging-based Exploration with a Mobile Robot

Jaime Pulido Fentanes; Iain Gould; Tom Duckett; Simon Pearson; Grzegorz Cielniak


arXiv: Robotics | 2018

Agricultural Robotics: The Future of Robotic Agriculture

Tom Duckett; Simon Pearson; S. Blackmore; Bruce Grieve


Archive | 2018

Soil Compaction Mapping Through Robot Exploration: A Study into Kriging Parameters

Jaime Pulido Fentanes; Iain Gould; Tom Duckett; Simon Pearson; Grzegorz Cielniak


Archive | 2018

Printable Soft Grippers with Integrated Bend Sensing for Handling of Crops

Khaled Elgeneidy; Pengcheng Liu; Simon Pearson; Niels Lohse; Gerhard Neumann


Archive | 2018

Contact Detection and Object Size Estimation using a Modular Soft Gripper with Embedded Flex Sensors

Khaled Elgeneidy; Gerhard Neumann; Simon Pearson; Michael R. Jackson; Niels Lohse


Archive | 2018

Energy-efficient design and control of a vibro-driven robot

Pengcheng Liu; Gerhard Neumann; Qinbing Fu; Simon Pearson; Hongnian Yu

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Bruce Grieve

University of Manchester

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Niels Lohse

Loughborough University

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