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Professor Scott Chapman
Professor

Scott Chapman

Email: 
Phone: 
+61 7 54601 108
Phone: 
+61 7 54601 152

Overview

Background

Summary of Research:

  • My current research at UQ is as Professor in this School (teaching AGRC3040 Crop Physiology) and as an Affiliate Professor of QAAFI. Since 2020, with full-time appointment at UQ, my research portfolio has included multiple projects in applications of machine learning and artificial intelligence into the ag domain. This area is developing rapidly and across UQ, I am engaging with faculty in multiple schools (ITEE, Maths and Physics, Mining and Mech Engineering) as well as in the Research Computing Centre to develop new projects and training opportunities at the interface of field agriculture and these new digital analytics.
  • My career research has been around genetic and environment effects on physiology of field crops, particularly where drought dominates. Application of quantitative approaches (crop simulation and statistical methods) and phenotyping (aerial imaging, canopy monitoring) to integrate the understanding of interactions of genetics, growth and development and the bio-physical environment on crop yield. In recent years, this work has expanded more generally into various applications in digital agriculture from work on canopy temperature sensing for irrigation decisions (CSIRO Entrepreneurship Award 2022) through to applications of deep-learning to imagery to assist breeding programs.
  • Much of this research was undertaken with CSIRO since 1996. Building on an almost continuous collaboration with UQ over that time, including as an Adjunct Professor to QAAFI, Prof Chapman was jointly appointed (50%) as a Professor in Crop Physiology in the UQ School of Agriculture and Food Sciences from 2017 to 2020, and at 100% with UQ from Sep 2020. He has led numerous research projects that impact local and global public and private breeding programs in wheat, sorghum, sunflower and sugarcane; led a national research program on research in ‘Climate-Ready Cereals’ in the early 2010s; and was one of the first researchers to deploy UAV technologies to monitor plant breeding programs. Current projects include a US DoE project with Purdue University, and multiple projects with CSIRO, U Adelaide, La Trobe, INRA (France) and U Tokyo. With > 8500 citations, Prof Chapman is currently in the top 1% of authors cited in the ESI fields of Plant and Animal Sciences and in Agricultural Sciences.

Availability

Professor Scott Chapman is:
Available for supervision
Media expert

Qualifications

  • Bachelor (Honours), The University of Queensland
  • Doctor of Philosophy, The University of Queensland

Research interests

  • Applications of deep learning in crop phenotyping

  • Use of simulation models in plant breeding programs and managing climate change

  • Deployment of IoT, UAV and remote sensing technologies in research and commercial field scales

Research impacts

Optimization of genotype evaluation methods in breeding programs

  • By 2005, completed two sugarcane projects that radically changed the priorities and evaluation methods of Australian breeding programs such that the delivery of new varieties now happens 3 to 5 years earlier. The major outcome was a confidential industry report. Supervised similar research for Advanta sunflower breeding in Argentina to reorganise and accelerate preliminary testing program.
  • Led the public sector’s most extensive global collaborative study of wheat variety performance (>200 trials). This has assisted the delivery of better spring-wheat varieties into developing countries and into Australia.
  • Extended research to use “environment characterization”, which I co-developed in the late 90s. The basic methodology to better identify stable varieties in the face of drought stress, has been adopted by international seed companies and local breeding programs in a range of crops.
  • From 2009 to 2017, led the development of applications of ‘Pheno-Copter’ autonomous aerial robot platform at CSIRO based on hardware and software processing systems to allow capture and analysis of high-throughput image information from field crop experiments in wheat, sorghum, sugarcane and cotton.
  • Since 2019/2020, have begun to lead two new research projects funded by GRDC involving both UQ and CSIRO. One project (AG-FE-ML) with partners in France (INRAe/ARVALIS) and Japan (U Tokyo) is in the applications of deep learning/feature extraction on agricultural imagery to allow automated segmentation of plant parts from images and to enable counting of reproductive structures (heads/panicles/grains) that are associated with grain yield of crops. The second project (INVITA) is applying a range of technologies (in-field sensors, cameras, satellite imagery, computer simulation) and methods (multi-variate statistics and machine learning) to attempt to improve the prediction of differences in yields among crop genotypes in the National Variety Trials. This research aims to allow the interpolation of results across the national production areas.

Exploiting crop adaptation traits through experiments and simulation studies

  • Supervised and co-investigated to demonstrate the adaptive yield and quality value of major wheat genes around the world (dwarfing and disease genes) and across Australia (water soluble carbohydrates, transpiration efficiency and tillering genes)
  • As a co-investigator, developed a unique platform (to the public sector) in the simulation modelling of crop growth and plant breeding programs. This platform has attracted >$6 million co-investment (ARC and private company) and provides the full capability to model the breeding systems of major crops. It continues development in the current ARC CoE for Plant Success.
  • Co-published pioneering research on the simulation of genetic controls of leaf growth processes within crop models. This original contribution has opened novel opportunities for the high-throughput simulation, testing and improvement of fully-specified physiological, breeding and statistical methodologies that are applied in plant breeding.
  • As lead PI (wheat) and co-PI (sorghum), ran experiments and improved models to analyse potential of genetic variation in heat tolerance to cope with current and future climates in Australian environments.

Works

Search Professor Scott Chapman’s works on UQ eSpace

311 works between 1988 and 2025

61 - 80 of 311 works

2021

Journal Article

Detecting sorghum plant and head features from multispectral UAV imagery

Zhao, Yan, Zheng, Bangyou, Chapman, Scott C., Laws, Kenneth, George-Jaeggli, Barbara, Hammer, Graeme L., Jordan, David R. and Potgieter, Andries B. (2021). Detecting sorghum plant and head features from multispectral UAV imagery. Plant Phenomics, 2021 9874650, 9874650-14. doi: 10.34133/2021/9874650

Detecting sorghum plant and head features from multispectral UAV imagery

2021

Journal Article

Global Wheat Head Detection 2021: an improved dataset for benchmarking wheat head detection methods

David, Etienne, Serouart, Mario, Smith, Daniel, Madec, Simon, Velumani, Kaaviya, Liu, Shouyang, Wang, Xu, Pinto, Francisco, Shafiee, Shahameh, Tahir, Izzat S. A., Tsujimoto, Hisashi, Nasuda, Shuhei, Zheng, Bangyou, Kirchgessner, Norbert, Aasen, Helge, Hund, Andreas, Sadhegi-Tehran, Pouria, Nagasawa, Koichi, Ishikawa, Goro, Dandrifosse, Sébastien, Carlier, Alexis, Dumont, Benjamin, Mercatoris, Benoit, Evers, Byron, Kuroki, Ken, Wang, Haozhou, Ishii, Masanori, Badhon, Minhajul A., Pozniak, Curtis ... Guo, Wei (2021). Global Wheat Head Detection 2021: an improved dataset for benchmarking wheat head detection methods. Plant Phenomics, 2021 9846158, 1-9. doi: 10.34133/2021/9846158

Global Wheat Head Detection 2021: an improved dataset for benchmarking wheat head detection methods

2021

Journal Article

Evaluation of water status of wheat genotypes to aid prediction of yield on sodic soils using UAV-thermal imaging and machine learning

Das, Sumanta, Christopher, Jack, Apan, Armando, Choudhury, Malini Roy, Chapman, Scott, Menzies, Neal W. and Dang, Yash P. (2021). Evaluation of water status of wheat genotypes to aid prediction of yield on sodic soils using UAV-thermal imaging and machine learning. Agricultural and Forest Meteorology, 307 108477, 108477. doi: 10.1016/j.agrformet.2021.108477

Evaluation of water status of wheat genotypes to aid prediction of yield on sodic soils using UAV-thermal imaging and machine learning

2021

Journal Article

Improving biomass and grain yield prediction of wheat genotypes on sodic soil using integrated high-resolution multispectral, hyperspectral, 3D point cloud, and machine learning techniques

Roy Choudhury, Malini, Das, Sumanta, Christopher, Jack, Apan, Armando, Chapman, Scott, Menzies, Neal W. and Dang, Yash P. (2021). Improving biomass and grain yield prediction of wheat genotypes on sodic soil using integrated high-resolution multispectral, hyperspectral, 3D point cloud, and machine learning techniques. Remote Sensing, 13 (17) 3482, 3482. doi: 10.3390/rs13173482

Improving biomass and grain yield prediction of wheat genotypes on sodic soil using integrated high-resolution multispectral, hyperspectral, 3D point cloud, and machine learning techniques

2021

Journal Article

Improving estimation of in-season crop water use and health of wheat genotypes on sodic soils using spatial interpolation techniques and multi-component metrics

Choudhury, Malini Roy, Mellor, Vincent, Das, Sumanta, Christopher, Jack, Apan, Armando, Menzies, Neal W., Chapman, Scott and Dang, Yash P. (2021). Improving estimation of in-season crop water use and health of wheat genotypes on sodic soils using spatial interpolation techniques and multi-component metrics. Agricultural Water Management, 255 107007, 1-16. doi: 10.1016/j.agwat.2021.107007

Improving estimation of in-season crop water use and health of wheat genotypes on sodic soils using spatial interpolation techniques and multi-component metrics

2021

Journal Article

UAV-thermal imaging: a technological breakthrough for monitoring and quantifying crop abiotic stress to help sustain productivity on sodic soils – a case review on wheat

Das, Sumanta, Chapman, Scott, Christopher, Jack, Roy Choudhury, Malini, Menzies, Neal W., Apan, Armando and Dang, Yash P. (2021). UAV-thermal imaging: a technological breakthrough for monitoring and quantifying crop abiotic stress to help sustain productivity on sodic soils – a case review on wheat. Remote Sensing Applications: Society and Environment, 23 100583, 1-13. doi: 10.1016/j.rsase.2021.100583

UAV-thermal imaging: a technological breakthrough for monitoring and quantifying crop abiotic stress to help sustain productivity on sodic soils – a case review on wheat

2021

Journal Article

Comparison of modelling strategies to estimate phenotypic values from an unmanned aerial vehicle with spectral and temporal vegetation indexes

Hu, Pengcheng, Chapman, Scott C., Jin, Huidong, Guo, Yan and Zheng, Bangyou (2021). Comparison of modelling strategies to estimate phenotypic values from an unmanned aerial vehicle with spectral and temporal vegetation indexes. Remote Sensing, 13 (14) 2827, 1-19. doi: 10.3390/rs13142827

Comparison of modelling strategies to estimate phenotypic values from an unmanned aerial vehicle with spectral and temporal vegetation indexes

2021

Journal Article

Genotype specific P-spline response surfaces assist interpretation of regional wheat adaptation to climate change

Bustos-Korts, Daniela, Boer, Martin P., Chenu, Karine, Zheng, Bangyou, Chapman, Scott and van Eeuwijk, Fred (2021). Genotype specific P-spline response surfaces assist interpretation of regional wheat adaptation to climate change. In Silico Plants, 3 (2) diab018. doi: 10.1093/insilicoplants/diab018

Genotype specific P-spline response surfaces assist interpretation of regional wheat adaptation to climate change

2021

Journal Article

Coupling of machine learning methods to improve estimation of ground coverage from unmanned aerial vehicle (UAV) imagery for high-throughput phenotyping of crops

Hu, Pengcheng, Chapman, Scott C. and Zheng, Bangyou (2021). Coupling of machine learning methods to improve estimation of ground coverage from unmanned aerial vehicle (UAV) imagery for high-throughput phenotyping of crops. Functional Plant Biology, 48 (8), 766-779. doi: 10.1071/FP20309

Coupling of machine learning methods to improve estimation of ground coverage from unmanned aerial vehicle (UAV) imagery for high-throughput phenotyping of crops

2021

Journal Article

Scaling up high-throughput phenotyping for abiotic stress selection in the field

Smith, Daniel T., Potgieter, Andries B. and Chapman, Scott C. (2021). Scaling up high-throughput phenotyping for abiotic stress selection in the field. Theoretical and Applied Genetics, 134 (6), 1845-1866. doi: 10.1007/s00122-021-03864-5

Scaling up high-throughput phenotyping for abiotic stress selection in the field

2021

Journal Article

Evolution and application of digital technologies to predict crop type and crop phenology in agriculture

Potgieter, A. B., Zhao, Yan, Zarco-Tejada, Pablo J, Chenu, Karine, Zhang, Yifan, Porker, Kenton, Biddulph, Ben, Dang, Yash P., Neale, Tim, Roosta, Fred and Chapman, Scott (2021). Evolution and application of digital technologies to predict crop type and crop phenology in agriculture. In Silico Plants, 3 (1) diab017, 1-23. doi: 10.1093/insilicoplants/diab017

Evolution and application of digital technologies to predict crop type and crop phenology in agriculture

2021

Journal Article

An analysis of simulated yield data for pepper shows how genotype × environment interaction in yield can be understood in terms of yield components and their QTLs

Rodrigues, Paulo C., Heuvelink, Ep, Marcelis, Leo F. M., Chapman, Scott C. and van Eeuwijk, Fred A. (2021). An analysis of simulated yield data for pepper shows how genotype × environment interaction in yield can be understood in terms of yield components and their QTLs. Crop Science, 61 (3), 1826-1842. doi: 10.1002/csc2.20476

An analysis of simulated yield data for pepper shows how genotype × environment interaction in yield can be understood in terms of yield components and their QTLs

2021

Journal Article

UAV-Thermal imaging and agglomerative hierarchical clustering techniques to evaluate and rank physiological performance of wheat genotypes on sodic soil

Das, Sumanta, Christopher, Jack, Apan, Armando, Roy Choudhury, Malini, Chapman, Scott, Menzies, Neal W. and Dang, Yash P. (2021). UAV-Thermal imaging and agglomerative hierarchical clustering techniques to evaluate and rank physiological performance of wheat genotypes on sodic soil. ISPRS Journal of Photogrammetry and Remote Sensing, 173, 221-237. doi: 10.1016/j.isprsjprs.2021.01.014

UAV-Thermal imaging and agglomerative hierarchical clustering techniques to evaluate and rank physiological performance of wheat genotypes on sodic soil

2021

Journal Article

Limiting transpiration rate in high evaporative demand conditions to improve Australian wheat productivity

Collins, Brian, Chapman, Scott, Hammer, Graeme and Chenu, Karine (2021). Limiting transpiration rate in high evaporative demand conditions to improve Australian wheat productivity. in silico Plants, 3 (1) diab006, 1-16. doi: 10.1093/insilicoplants/diab006

Limiting transpiration rate in high evaporative demand conditions to improve Australian wheat productivity

2021

Journal Article

Integrating crop growth models with remote sensing for predicting biomass yield of sorghum

Yang, Kai-Wei, Chapman, Scott, Carpenter, Neal, Hammer, Graeme, McLean, Greg, Zheng, Bangyou, Chen, Yuhao, Delp, Edward, Masjedi, Ali, Crawford, Melba, Ebert, David, Habib, Ayman, Thompson, Addie, Weil, Clifford and Tuinstra, Mitchell R (2021). Integrating crop growth models with remote sensing for predicting biomass yield of sorghum. In Silico Plants, 3 (1) diab001, 1-19. doi: 10.1093/insilicoplants/diab001

Integrating crop growth models with remote sensing for predicting biomass yield of sorghum

2021

Journal Article

Modelling selection response in plant breeding programs using crop models as mechanistic gene-to-phenotype (CGM-G2P) multi-trait link functions

Cooper, M., Powell, O., Voss-Fels, K. P., Messina, C. D., Gho, C., Podlich, D. W., Technow, F., Chapman, S. C., Beveridge, C. A., Ortiz-Barrientos, D. and Hammer, G. L. (2021). Modelling selection response in plant breeding programs using crop models as mechanistic gene-to-phenotype (CGM-G2P) multi-trait link functions. in silico Plants, 3 (1) diaa016, 1-21. doi: 10.1093/insilicoplants/diaa016

Modelling selection response in plant breeding programs using crop models as mechanistic gene-to-phenotype (CGM-G2P) multi-trait link functions

2021

Conference Publication

Domain adaptation for plant organ detection with style transfer

James, Chrisbin, Gu, Yanyang, Chapman, Scott, Guo, Wei, David, Etienne, Madec, Simon, Potgieter, Andries and Eriksson, Anders (2021). Domain adaptation for plant organ detection with style transfer. International Conference on Digital Image Computing - Techniques and Applications (DICTA), Online, 29 November - 1 December 2021. Piscataway, NJ United States: Institute of Electrical and Electronics Engineers. doi: 10.1109/DICTA52665.2021.9647293

Domain adaptation for plant organ detection with style transfer

2020

Conference Publication

UAV-thermal imaging: A robust technology to evaluate in-field crop water stress and yield variation of wheat genotypes

Das, Sumanta, Christopher, Jack, Apan, Armando, Roy Choudhury, Malini, Chapman, Scott, Menzies, Neal W. and Dang, Yash P. (2020). UAV-thermal imaging: A robust technology to evaluate in-field crop water stress and yield variation of wheat genotypes. IEEE India Geoscience and Remote Sensing Symposium (InGARSS), Ahmedabad, India, 1-4 December 2020. Piscataway, NJ, United States: IEEE. doi: 10.1109/ingarss48198.2020.9358955

UAV-thermal imaging: A robust technology to evaluate in-field crop water stress and yield variation of wheat genotypes

2020

Journal Article

Global Wheat Head Detection (GWHD) dataset: a large and diverse dataset of high-resolution rgb-labelled images to develop and benchmark wheat head detection methods

David, E., Madec, Shouyang, Sadeghi-Tehran, Pouria, Aasen, Helge, Zheng, B., Liu, Simon, Kirchgessner, Norbert, Ishikawa, Goro, Nagasawa, Koichi, Badhon, Minhajul A., Pozniak, Curtis, de Solan, Benoit, Hund, Andreas, Chapman, Scott C., Baret, Fred, Stavness, Ian and Guo, Wei (2020). Global Wheat Head Detection (GWHD) dataset: a large and diverse dataset of high-resolution rgb-labelled images to develop and benchmark wheat head detection methods. Plant Phenomics, 2020 3521852, 1-12. doi: 10.34133/2020/3521852

Global Wheat Head Detection (GWHD) dataset: a large and diverse dataset of high-resolution rgb-labelled images to develop and benchmark wheat head detection methods

2020

Journal Article

Breeder friendly phenotyping

Reynolds, Matthew, Chapman, Scott, Crespo-Herrera, Leonardo, Molero, Gemma, Mondal, Suchismita, Pequeno, Diego N.L., Pinto, Francisco, Pinera-Chavez, Francisco J., Poland, Jesse, Rivera-Amado, Carolina, Saint Pierre, Carolina and Sukumaran, Sivakumar (2020). Breeder friendly phenotyping. Plant Science, 295 110396, 110396. doi: 10.1016/j.plantsci.2019.110396

Breeder friendly phenotyping

Funding

Current funding

  • 2024 - 2029
    ARC Training Centre in Predictive Breeding for Agricultural Futures
    ARC Industrial Transformation Training Centres
    Open grant
  • 2023 - 2028
    Narrow orchard systems for future climates (administered by Agriculture Victoria)
    Agriculture Victoria
    Open grant
  • 2023 - 2028
    Australian Plan Phenomics Facility NCRIS 2022 (administered by The University of Adelaide)
    University of Adelaide
    Open grant
  • 2023 - 2025
    Proximal and remote sensing for low-cost soil carbon stock estimation
    Commonwealth Department of Industry, Science, Energy and Resources
    Open grant
  • 2023 - 2027
    Analytics for the Australian Grains Industry (AAGI)
    Grains Research & Development Corporation
    Open grant
  • 2021 - 2027
    Reducing lodging risk in sorghum to increase grower confidence and profitability
    Grains Research & Development Corporation
    Open grant
  • 2021 - 2025
    Evaluating Salinity Tolerance in Diverse Taro (Colocasia) Wild Relatives to enhance Food Security in the Pacific Islands
    Australia & Pacific Science Foundation
    Open grant
  • 2021 - 2025
    CropVision: A next-generation system for predicting crop production
    ARC Linkage Projects
    Open grant

Past funding

  • 2023 - 2024
    Developing applications of satellite imagery for modelling environmental and social impacts of climate change on seaweed farming in Indonesia (KONEKSI Grant administered by Griffith University)
    Griffith University
    Open grant
  • 2022 - 2023
    Lean design workshop to understand future challenges for horticulture production in tropical and subtropical regions of Australia
    Horticulture Innovation Australia Limited
    Open grant
  • 2021 - 2023
    Carbon ID: A remote sensing decision support tool to identify the impact of agricultural land management on soil carbon stock
    Queensland Department of Agriculture and Fisheries
    Open grant
  • 2020 - 2022
    AgAsk: A machine learning generated question-answering conversational agent for data-driven growing decisions.
    Grains Research & Development Corporation
    Open grant
  • 2020 - 2024
    INVITA A technology and analytics platform for improving variety selection
    Grains Research & Development Corporation
    Open grant
  • 2020 - 2024
    CropPhen: Remote mapping of grain crop type and phenology
    Grains Research & Development Corporation
    Open grant
  • 2020 - 2022
    Machine learning to extract maximum value from soil and crop variability (GRDC project administered by The University of Adelaide).
    University of Adelaide
    Open grant
  • 2020 - 2022
    Machine learning applied to High-throughput feature extraction from imagery to map spatial variability
    Grains Research & Development Corporation
    Open grant
  • 2018 - 2024
    Enhancing Light Use Efficiency to break through yield potential barriers in grain crops
    Pioneer Hi-Bred International Inc.
    Open grant
  • 2016 - 2019
    Automated Sorghum Phenotyping and Trait Development Platform
    Purdue University
    Open grant

Supervision

Availability

Professor Scott Chapman is:
Available for supervision

Before you email them, read our advice on how to contact a supervisor.

Available projects

  • See Research Interests

    We have multiple opportunities for agricultural and maths/IT/engineering students to enrol or be co-supervised in research with our teams.

    Please contact me or carla.gho@uq.edu.au

Supervision history

Current supervision

Completed supervision

Media

Enquiries

Contact Professor Scott Chapman directly for media enquiries about:

  • ag tech
  • climate change and crop production
  • crop science
  • digital agriculture

Need help?

For help with finding experts, story ideas and media enquiries, contact our Media team:

communications@uq.edu.au