Published: 02 Jul 2025 19 views
This project will advance automated technologies for machine vision sensing of plant health in Controlled Environment Agriculture (CEA), for example in vertical farming systems. CEA is projected to be of critical importance to meet food production targets on Earth to address finite land availability and a growing global population. Plant growth monitoring with machine vision is a key component of automating plant care in CEA, to complement human visual assessments of plant health and provide input for adaptive closed-loop control of plant water and nutrients.
This project will build on mechatronic, electronic, robotic and software engineering skills to develop and evaluate machine vision-based algorithms for automated plant care in a controlled environment with artificial lighting. Relevant tasks will include placing machine vision cameras, performing laboratory trials of closed-loop plant care for example with a gantry robot, comparing day and night imaging, and developing and evaluating automated and robust software algorithms that enhance plant growth, health and yield.
This PhD scholarship is funded by the iLAuNCH Trailblazer, aligned with a current iLAuNCH project in which machine vision is being used to monitor plant growth in space. For more information on iLAuNCH, please visit ilaunch.space.
To be eligible applicants must:
To be eligible applicants must:
To apply, please ensure you have digital copies of the below information:
Please directly contact Associate Professor Cheryl McCarthy by emailing [email protected], who will advise you of the application steps.
Further enquiries about this scholarship can be obtained from Associate Professor Cheryl McCarthy by emailing [email protected].
For more information, kindly visit University of Southern Queensland scholarship webpage.
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