Full TGIF Record # 333353
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Web URL(s):https://scisoc.confex.com/scisoc/2023am/meetingapp.cgi/Paper/149620
    Last checked: 11/29/2023
Publication Type:
i
Report
Content Type:Abstract or Summary only
Author(s):Yang, Haoguang
Author Affiliation:Presenting Author and Plant Biology, Rutgers University, New Brunswick, NJ
Title:Remote sensing for high throughput phenotyping and detection of stress from deficit irrigation for creeping bentgrass
Section:Turfgrass water conservation and management oral (includes student competition)
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C05 turfgrass science
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Meeting Info.:St. Louis, Missouri: October 29-November 1, 2023
Source:ASA, CSSA, SSSA International Annual Meeting. 2023, p. 149620.
Publishing Information:[Madison, Wisconsin]: [American Society of Agronomy, Crop Science Society of America, and Soil Science Society of America]
# of Pages:1
Abstract/Contents:"Preventing drought stress is an essential aspect in turfgrass management as well as one of the major costs in regular turf maintainace. For turfgrass research, reducing cost of irrigation has been one of the major focuses of the field. In recent years, many advancements in turfgrass physiology, remote-sensing and high-throughput phenotyping have enabled us to develop a noval way to predict and monitor turfgrass drought status. In this study, we intend to develop a Unmanned Aircraft System (UAS)-based, precision turfgrass manangement system for water conservation. We used hyperspectral imaging system in lab environment to analyze various vegetation and photochemical indices for predictibility of drought stress in Kentucky Bluegrass (Poa pratensis) and tested candidate vegetation indices in a gradient-irrigation field of Creeping Bentgrass (Agrostis stolonifera) using UAS-based multispectral imaging system."
Language:English
References:0
Note:"39-2"
This item is an abstract only!
ASA/CSSA/SSSA Citation (Crop Science-Like - may be incomplete):
Yang, H. 2023. Remote sensing for high throughput phenotyping and detection of stress from deficit irrigation for creeping bentgrass. Agron. Abr. p. 149620.
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https://scisoc.confex.com/scisoc/2023am/meetingapp.cgi/Paper/149620
    Last checked: 11/29/2023
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