Development of a Raspberry Pi-Based Sensor System for Automated In-Field Monitoring to Support Crop Breeding Programs

Sensor applications for plant phenotyping can advance and strengthen crop breeding programs. One of the powerful sensing options is the automated sensor system, which can be customized and applied for plant science research. The system can provide high spatial and temporal resolution data to delinea...

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Main Authors: Worasit Sangjan, Arron H. Carter, Michael O. Pumphrey, Vadim Jitkov, Sindhuja Sankaran
Format: Article
Language:English
Published: MDPI AG 2021-06-01
Series:Inventions
Subjects:
Online Access:https://www.mdpi.com/2411-5134/6/2/42
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spelling doaj-c7212c2de2254d44811891574dbfa6cc2021-07-15T15:38:42ZengMDPI AGInventions2411-51342021-06-016424210.3390/inventions6020042Development of a Raspberry Pi-Based Sensor System for Automated In-Field Monitoring to Support Crop Breeding ProgramsWorasit Sangjan0Arron H. Carter1Michael O. Pumphrey2Vadim Jitkov3Sindhuja Sankaran4Department of Biological Systems Engineering, Washington State University, Pullman, WA 99164, USADepartment of Crop and Soil Sciences, Washington State University, Pullman, WA 99164, USADepartment of Crop and Soil Sciences, Washington State University, Pullman, WA 99164, USADepartment of Crop and Soil Sciences, Washington State University, Pullman, WA 99164, USADepartment of Biological Systems Engineering, Washington State University, Pullman, WA 99164, USASensor applications for plant phenotyping can advance and strengthen crop breeding programs. One of the powerful sensing options is the automated sensor system, which can be customized and applied for plant science research. The system can provide high spatial and temporal resolution data to delineate crop interaction with weather changes in a diverse environment. Such a system can be integrated with the internet to enable the internet of things (IoT)-based sensor system development for real-time crop monitoring and management. In this study, the Raspberry Pi-based sensor (imaging) system was fabricated and integrated with a microclimate sensor to evaluate crop growth in a spring wheat breeding trial for automated phenotyping applications. Such an in-field sensor system will increase the reproducibility of measurements and improve the selection efficiency by investigating dynamic crop responses as well as identifying key growth stages (e.g., heading), assisting in the development of high-performing crop varieties. In the low-cost system developed here-in, a Raspberry Pi computer and multiple cameras (RGB and multispectral) were the main components. The system was programmed to automatically capture and manage the crop image data at user-defined time points throughout the season. The acquired images were suitable for extracting quantifiable plant traits, and the images were automatically processed through a Python script (an open-source programming language) to extract vegetation indices, representing crop growth and overall health. Ongoing efforts are conducted towards integrating the sensor system for real-time data monitoring via the internet that will allow plant breeders to monitor multiple trials for timely crop management and decision making.https://www.mdpi.com/2411-5134/6/2/42sensorhigh-throughput phenotypinginternet of thingsRaspberry Pi
collection DOAJ
language English
format Article
sources DOAJ
author Worasit Sangjan
Arron H. Carter
Michael O. Pumphrey
Vadim Jitkov
Sindhuja Sankaran
spellingShingle Worasit Sangjan
Arron H. Carter
Michael O. Pumphrey
Vadim Jitkov
Sindhuja Sankaran
Development of a Raspberry Pi-Based Sensor System for Automated In-Field Monitoring to Support Crop Breeding Programs
Inventions
sensor
high-throughput phenotyping
internet of things
Raspberry Pi
author_facet Worasit Sangjan
Arron H. Carter
Michael O. Pumphrey
Vadim Jitkov
Sindhuja Sankaran
author_sort Worasit Sangjan
title Development of a Raspberry Pi-Based Sensor System for Automated In-Field Monitoring to Support Crop Breeding Programs
title_short Development of a Raspberry Pi-Based Sensor System for Automated In-Field Monitoring to Support Crop Breeding Programs
title_full Development of a Raspberry Pi-Based Sensor System for Automated In-Field Monitoring to Support Crop Breeding Programs
title_fullStr Development of a Raspberry Pi-Based Sensor System for Automated In-Field Monitoring to Support Crop Breeding Programs
title_full_unstemmed Development of a Raspberry Pi-Based Sensor System for Automated In-Field Monitoring to Support Crop Breeding Programs
title_sort development of a raspberry pi-based sensor system for automated in-field monitoring to support crop breeding programs
publisher MDPI AG
series Inventions
issn 2411-5134
publishDate 2021-06-01
description Sensor applications for plant phenotyping can advance and strengthen crop breeding programs. One of the powerful sensing options is the automated sensor system, which can be customized and applied for plant science research. The system can provide high spatial and temporal resolution data to delineate crop interaction with weather changes in a diverse environment. Such a system can be integrated with the internet to enable the internet of things (IoT)-based sensor system development for real-time crop monitoring and management. In this study, the Raspberry Pi-based sensor (imaging) system was fabricated and integrated with a microclimate sensor to evaluate crop growth in a spring wheat breeding trial for automated phenotyping applications. Such an in-field sensor system will increase the reproducibility of measurements and improve the selection efficiency by investigating dynamic crop responses as well as identifying key growth stages (e.g., heading), assisting in the development of high-performing crop varieties. In the low-cost system developed here-in, a Raspberry Pi computer and multiple cameras (RGB and multispectral) were the main components. The system was programmed to automatically capture and manage the crop image data at user-defined time points throughout the season. The acquired images were suitable for extracting quantifiable plant traits, and the images were automatically processed through a Python script (an open-source programming language) to extract vegetation indices, representing crop growth and overall health. Ongoing efforts are conducted towards integrating the sensor system for real-time data monitoring via the internet that will allow plant breeders to monitor multiple trials for timely crop management and decision making.
topic sensor
high-throughput phenotyping
internet of things
Raspberry Pi
url https://www.mdpi.com/2411-5134/6/2/42
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