2022
DOI: 10.1111/nph.18314
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AirMeasurer: open‐source software to quantify static and dynamic traits derived from multiseason aerial phenotyping to empower genetic mapping studies in rice

Abstract: Low-altitude aerial imaging, an approach that can collect large-scale plant imagery, has grown in popularity recently. Amongst many phenotyping approaches, unmanned aerial vehicles (UAVs) possess unique advantages as a consequence of their mobility, flexibility and affordability. Nevertheless, how to extract biologically relevant information effectively has remained challenging.Here, we present AIRMEASURER, an open-source and expandable platform that combines automated image analysis, machine learning and orig… Show more

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Cited by 17 publications
(22 citation statements)
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“…So far, several attempts have been successfully applied for using temporal phenotype (e.g. temporal plant height and NDVI) in maize (Han et al ., 2019; Wang et al ., 2019, 2021; Anderson et al ., 2020; Tirado et al ., 2020; Adak et al ., 2021b, 2023b; Oehme et al ., 2022; Rodene et al ., 2022; Chatterjee et al ., 2023), sorghum (Miao et al ., 2020), cotton (Pauli et al ., 2016), and rice (Sun et al ., 2022). However, several important limitations exist when examining temporal phenotypes and incorporating these into QTL or genomic association mapping.…”
Section: Discussionmentioning
confidence: 99%
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“…So far, several attempts have been successfully applied for using temporal phenotype (e.g. temporal plant height and NDVI) in maize (Han et al ., 2019; Wang et al ., 2019, 2021; Anderson et al ., 2020; Tirado et al ., 2020; Adak et al ., 2021b, 2023b; Oehme et al ., 2022; Rodene et al ., 2022; Chatterjee et al ., 2023), sorghum (Miao et al ., 2020), cotton (Pauli et al ., 2016), and rice (Sun et al ., 2022). However, several important limitations exist when examining temporal phenotypes and incorporating these into QTL or genomic association mapping.…”
Section: Discussionmentioning
confidence: 99%
“…Field-based high-throughput phenotyping (FHTP) combines cutting-edge remote sensing technologies with traditional breeding and genetics approaches to rapidly and non-invasively assess and quantify a wide range of plant traits in natural field conditions (Araus & Cairns, 2014). Field-based high-throughput phenotyping has gained significant attention and prominence in recent years due to its potential to accelerate crop improvement and enhance our understanding of plant responses to various environmental stresses (Pauli et al, 2016;Shi et al, 2016;Araus et al, 2018;Wang et al, 2019Wang et al, , 2021Zhou et al, 2021;Adak et al, 2021aAdak et al, ,b, 2023bOehme et al, 2022;Sun et al, 2022;Herr et al, 2023;Li et al, 2023). Field-based high-throughput phenotyping involves the integration of advanced sensing technologies, robotics, data analytics, and remote sensing with traditional agronomic practices.…”
Section: Introductionmentioning
confidence: 99%
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“…Nevertheless, the present bottleneck for aerial phenotyping is analytical solutions, which need to be readily used to extract meaningful and reliable trait information from the obtained images. An open-source platform called AIRMEASURER developed by Sun et al (2022; pp. 1584-1604, published in this issue of New Phytologist, has made efforts to address this problem.…”
mentioning
confidence: 99%
“…An open‐source platform called A ir M easurer developed by Sun et al . ( 2022 ; pp. 1584–1604), published in this issue of New Phytologist , has made efforts to address this problem.…”
mentioning
confidence: 99%