A low-cost and open-source platform for automated imaging

Abstract Background Remote monitoring of plants using hyperspectral imaging has become an important tool for the study of plant growth, development, and physiology. Many applications are oriented towards use in field environments to enable non-destructive analysis of crop responses due to factors su...

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Main Authors: Max R. Lien, Richard J. Barker, Zhiwei Ye, Matthew H. Westphall, Ruohan Gao, Aditya Singh, Simon Gilroy, Philip A. Townsend
Format: Article
Language:English
Published: BMC 2019-01-01
Series:Plant Methods
Subjects:
Online Access:http://link.springer.com/article/10.1186/s13007-019-0392-1
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spelling doaj-a9acd15a99a94a0d89a402b964e37d4d2020-11-25T01:20:24ZengBMCPlant Methods1746-48112019-01-0115111410.1186/s13007-019-0392-1A low-cost and open-source platform for automated imagingMax R. Lien0Richard J. Barker1Zhiwei Ye2Matthew H. Westphall3Ruohan Gao4Aditya Singh5Simon Gilroy6Philip A. Townsend7Russell Labs, University of Wisconsin-MadisonBirge Hall, University of Wisconsin-MadisonRussell Labs, University of Wisconsin-MadisonRussell Labs, University of Wisconsin-MadisonRussell Labs, University of Wisconsin-MadisonFrazier Rogers HallBirge Hall, University of Wisconsin-MadisonRussell Labs, University of Wisconsin-MadisonAbstract Background Remote monitoring of plants using hyperspectral imaging has become an important tool for the study of plant growth, development, and physiology. Many applications are oriented towards use in field environments to enable non-destructive analysis of crop responses due to factors such as drought, nutrient deficiency, and disease, e.g., using tram, drone, or airplane mounted instruments. The field setting introduces a wide range of uncontrolled environmental variables that make validation and interpretation of spectral responses challenging, and as such lab- and greenhouse-deployed systems for plant studies and phenotyping are of increasing interest. In this study, we have designed and developed an open-source, hyperspectral reflectance-based imaging system for lab-based plant experiments: the HyperScanner. The reliability and accuracy of HyperScanner were validated using drought and salt stress experiments with Arabidopsis thaliana. Results A robust, scalable, and reliable system was created. The system was built using open-sourced parts, and all custom parts, operational methods, and data have been made publicly available in order to maintain the open-source aim of HyperScanner. The gathered reflectance images showed changes in narrowband red and infrared reflectance spectra for each of the stress tests that was evident prior to other visual physiological responses and exhibited congruence with measurements using full-range contact spectrometers. Conclusions HyperScanner offers the potential for reliable and inexpensive laboratory hyperspectral imaging systems. HyperScanner was able to quickly collect accurate reflectance curves on a variety of plant stress experiments. The resulting images showed spectral differences in plants shortly after application of a treatment but before visual manifestation. HyperScanner increases the capacity for spectroscopic and imaging-based analytical tools by providing more access to hyperspectral analyses in the laboratory setting.http://link.springer.com/article/10.1186/s13007-019-0392-1AutomatedHyperspectral imagingOpen-sourceImaging spectroscopyNon-invasiveReflectance
collection DOAJ
language English
format Article
sources DOAJ
author Max R. Lien
Richard J. Barker
Zhiwei Ye
Matthew H. Westphall
Ruohan Gao
Aditya Singh
Simon Gilroy
Philip A. Townsend
spellingShingle Max R. Lien
Richard J. Barker
Zhiwei Ye
Matthew H. Westphall
Ruohan Gao
Aditya Singh
Simon Gilroy
Philip A. Townsend
A low-cost and open-source platform for automated imaging
Plant Methods
Automated
Hyperspectral imaging
Open-source
Imaging spectroscopy
Non-invasive
Reflectance
author_facet Max R. Lien
Richard J. Barker
Zhiwei Ye
Matthew H. Westphall
Ruohan Gao
Aditya Singh
Simon Gilroy
Philip A. Townsend
author_sort Max R. Lien
title A low-cost and open-source platform for automated imaging
title_short A low-cost and open-source platform for automated imaging
title_full A low-cost and open-source platform for automated imaging
title_fullStr A low-cost and open-source platform for automated imaging
title_full_unstemmed A low-cost and open-source platform for automated imaging
title_sort low-cost and open-source platform for automated imaging
publisher BMC
series Plant Methods
issn 1746-4811
publishDate 2019-01-01
description Abstract Background Remote monitoring of plants using hyperspectral imaging has become an important tool for the study of plant growth, development, and physiology. Many applications are oriented towards use in field environments to enable non-destructive analysis of crop responses due to factors such as drought, nutrient deficiency, and disease, e.g., using tram, drone, or airplane mounted instruments. The field setting introduces a wide range of uncontrolled environmental variables that make validation and interpretation of spectral responses challenging, and as such lab- and greenhouse-deployed systems for plant studies and phenotyping are of increasing interest. In this study, we have designed and developed an open-source, hyperspectral reflectance-based imaging system for lab-based plant experiments: the HyperScanner. The reliability and accuracy of HyperScanner were validated using drought and salt stress experiments with Arabidopsis thaliana. Results A robust, scalable, and reliable system was created. The system was built using open-sourced parts, and all custom parts, operational methods, and data have been made publicly available in order to maintain the open-source aim of HyperScanner. The gathered reflectance images showed changes in narrowband red and infrared reflectance spectra for each of the stress tests that was evident prior to other visual physiological responses and exhibited congruence with measurements using full-range contact spectrometers. Conclusions HyperScanner offers the potential for reliable and inexpensive laboratory hyperspectral imaging systems. HyperScanner was able to quickly collect accurate reflectance curves on a variety of plant stress experiments. The resulting images showed spectral differences in plants shortly after application of a treatment but before visual manifestation. HyperScanner increases the capacity for spectroscopic and imaging-based analytical tools by providing more access to hyperspectral analyses in the laboratory setting.
topic Automated
Hyperspectral imaging
Open-source
Imaging spectroscopy
Non-invasive
Reflectance
url http://link.springer.com/article/10.1186/s13007-019-0392-1
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