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Andrade-Sanchez et al., 2013 - Google Patents

Development and evaluation of a field-based high-throughput phenotyping platform

Andrade-Sanchez et al., 2013

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Document ID
17632815222263003309
Author
Andrade-Sanchez P
Gore M
Heun J
Thorp K
Carmo-Silva A
French A
Salvucci M
White J
Publication year
Publication venue
Functional Plant Biology

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Physiological and developmental traits that vary over time are difficult to phenotype under relevant growing conditions. In this light, we developed a novel system for phenotyping dynamic traits in the field. System performance was evaluated on 25 Pima cotton …
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