Phenomics

"Phenomics" is an emerging area of research whose aspiration is the systematic measurement of the physical, physiological and biochemical traits (the phenome) belonging to a given individual or collection of individuals. Non-destructive or minimally invasive techniques allow repeated measu...

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Superior document:Frontiers Research Topics
:
Year of Publication:2018
Language:English
Series:Frontiers Research Topics
Physical Description:1 electronic resource (222 p.)
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Phenomics
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Frontiers Research Topics
"Phenomics" is an emerging area of research whose aspiration is the systematic measurement of the physical, physiological and biochemical traits (the phenome) belonging to a given individual or collection of individuals. Non-destructive or minimally invasive techniques allow repeated measurements across time to follow phenotypes as a function of developmental time. These longitudinal traits promise new insights into the ways in which crops respond to their environment including how they are managed. To maximize the benefit, these approaches should ideally be scalable so that large populations in multiple environments can be sampled repeatedly at reasonable cost. Thus, the development and validation of non-contact sensing technologies remains an area of intensive activity that ranges from Remote Sensing of crops within the landscape to high resolution at the subcellular level. Integration of this potentially highly dimensional data and linking it with variation at the genetic level is an ongoing challenge that promises to release the potential of both established and under-exploited crops.
English
RGB data
Multispectral imaging
RGB image analysis
artificial vision
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John Doonan auth
language English
format eBook
author Marcos Egea-Cortines
spellingShingle Marcos Egea-Cortines
Phenomics
Frontiers Research Topics
author_facet Marcos Egea-Cortines
John Doonan
author_variant m e c mec
author2 John Doonan
author2_variant j d jd
author_sort Marcos Egea-Cortines
title Phenomics
title_full Phenomics
title_fullStr Phenomics
title_full_unstemmed Phenomics
title_auth Phenomics
title_new Phenomics
title_sort phenomics
series Frontiers Research Topics
series2 Frontiers Research Topics
publisher Frontiers Media SA
publishDate 2018
physical 1 electronic resource (222 p.)
isbn 2-88945-607-2
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