Quantifying the Onset and Progression of Plant Senescence by Color Image Analysis for High Throughput Applications.

Leaf senescence, an indicator of plant age and ill health, is an important phenotypic trait for the assessment of a plant's response to stress. Manual inspection of senescence, however, is time consuming, inaccurate and subjective. In this paper we propose an objective evaluation of plant senes...

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Main Authors: Jinhai Cai, Mamoru Okamoto, Judith Atieno, Tim Sutton, Yongle Li, Stanley J Miklavcic
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2016-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC4922665?pdf=render
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spelling doaj-b8ad9fd954394b1a9adafda4572521c62020-11-24T20:45:06ZengPublic Library of Science (PLoS)PLoS ONE1932-62032016-01-01116e015710210.1371/journal.pone.0157102Quantifying the Onset and Progression of Plant Senescence by Color Image Analysis for High Throughput Applications.Jinhai CaiMamoru OkamotoJudith AtienoTim SuttonYongle LiStanley J MiklavcicLeaf senescence, an indicator of plant age and ill health, is an important phenotypic trait for the assessment of a plant's response to stress. Manual inspection of senescence, however, is time consuming, inaccurate and subjective. In this paper we propose an objective evaluation of plant senescence by color image analysis for use in a high throughput plant phenotyping pipeline. As high throughput phenotyping platforms are designed to capture whole-of-plant features, camera lenses and camera settings are inappropriate for the capture of fine detail. Specifically, plant colors in images may not represent true plant colors, leading to errors in senescence estimation. Our algorithm features a color distortion correction and image restoration step prior to a senescence analysis. We apply our algorithm to two time series of images of wheat and chickpea plants to quantify the onset and progression of senescence. We compare our results with senescence scores resulting from manual inspection. We demonstrate that our procedure is able to process images in an automated way for an accurate estimation of plant senescence even from color distorted and blurred images obtained under high throughput conditions.http://europepmc.org/articles/PMC4922665?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Jinhai Cai
Mamoru Okamoto
Judith Atieno
Tim Sutton
Yongle Li
Stanley J Miklavcic
spellingShingle Jinhai Cai
Mamoru Okamoto
Judith Atieno
Tim Sutton
Yongle Li
Stanley J Miklavcic
Quantifying the Onset and Progression of Plant Senescence by Color Image Analysis for High Throughput Applications.
PLoS ONE
author_facet Jinhai Cai
Mamoru Okamoto
Judith Atieno
Tim Sutton
Yongle Li
Stanley J Miklavcic
author_sort Jinhai Cai
title Quantifying the Onset and Progression of Plant Senescence by Color Image Analysis for High Throughput Applications.
title_short Quantifying the Onset and Progression of Plant Senescence by Color Image Analysis for High Throughput Applications.
title_full Quantifying the Onset and Progression of Plant Senescence by Color Image Analysis for High Throughput Applications.
title_fullStr Quantifying the Onset and Progression of Plant Senescence by Color Image Analysis for High Throughput Applications.
title_full_unstemmed Quantifying the Onset and Progression of Plant Senescence by Color Image Analysis for High Throughput Applications.
title_sort quantifying the onset and progression of plant senescence by color image analysis for high throughput applications.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2016-01-01
description Leaf senescence, an indicator of plant age and ill health, is an important phenotypic trait for the assessment of a plant's response to stress. Manual inspection of senescence, however, is time consuming, inaccurate and subjective. In this paper we propose an objective evaluation of plant senescence by color image analysis for use in a high throughput plant phenotyping pipeline. As high throughput phenotyping platforms are designed to capture whole-of-plant features, camera lenses and camera settings are inappropriate for the capture of fine detail. Specifically, plant colors in images may not represent true plant colors, leading to errors in senescence estimation. Our algorithm features a color distortion correction and image restoration step prior to a senescence analysis. We apply our algorithm to two time series of images of wheat and chickpea plants to quantify the onset and progression of senescence. We compare our results with senescence scores resulting from manual inspection. We demonstrate that our procedure is able to process images in an automated way for an accurate estimation of plant senescence even from color distorted and blurred images obtained under high throughput conditions.
url http://europepmc.org/articles/PMC4922665?pdf=render
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