Home > Research > Publications & Outputs > Hyperspectral and Thermal Remote Sensing of Pla...

Electronic data

  • 11003496.pdf

    Final published version, 9.76 MB, PDF document

    Available under license: CC BY-ND

View graph of relations

Hyperspectral and Thermal Remote Sensing of Plant Stress Reponses to Oil Pollution.

Research output: ThesisDoctoral Thesis

Unpublished

Standard

Hyperspectral and Thermal Remote Sensing of Plant Stress Reponses to Oil Pollution. / Emengini, Ebele Josephine.
Lancaster: Lancaster University, 2010. 303 p.

Research output: ThesisDoctoral Thesis

Harvard

Emengini, EJ 2010, 'Hyperspectral and Thermal Remote Sensing of Plant Stress Reponses to Oil Pollution.', PhD, Lancaster University, Lancaster.

APA

Emengini, E. J. (2010). Hyperspectral and Thermal Remote Sensing of Plant Stress Reponses to Oil Pollution. [Doctoral Thesis, Lancaster University]. Lancaster University.

Vancouver

Emengini EJ. Hyperspectral and Thermal Remote Sensing of Plant Stress Reponses to Oil Pollution.. Lancaster: Lancaster University, 2010. 303 p.

Author

Emengini, Ebele Josephine. / Hyperspectral and Thermal Remote Sensing of Plant Stress Reponses to Oil Pollution.. Lancaster : Lancaster University, 2010. 303 p.

Bibtex

@phdthesis{8999e82afd12488ea56f92dc3dee8ce7,
title = "Hyperspectral and Thermal Remote Sensing of Plant Stress Reponses to Oil Pollution.",
abstract = "This study investigates the potential use of hyperspectral and thermal remote sensing for the early pre-visual detection and quantification of plant stress caused by oil pollution. Further, it examines the potential for these techniques to discriminate between oil pollution and two typically encountered plant stresses of waterlogging and water deficit. Results show that oil pollution, waterlogging and water deficit significantly decreased the physiological functions of plants and can result in pre-visual changes in spectral and thermal responses. Various spectral indices such as (R755-R716)/(R755+R716) and R800/R6O6 were efficient for the early detection of oil-induced stress in maize (up to 10 days earlier) and bean (up to 4 days earlier), respectively. These indices and other simple ratios of reflectance such as R673/R545 were also sensitive in the early detection (up to 6 days earlier) of stress symptoms caused by waterlogging in bean. The canopy absolute temperature and thermal index (IG) were good indicators of oil related stress in bean, but were insensitive to waterlogging. Absolute leaf temperature had minimal potential for detecting oil pollution in maize. While the spectral indices lacked ability for the early detection of stress caused by water deficit at the leaf scale in both maize and bean, absolute temperature was effective in this regard irrespective of scale of measurement. Results show that by combining spectral and thermal information, oil pollution can be discriminated from waterlogging or water deficit treatment. This study concludes that hyperspectral and thermal remote sensing have the potential to detect and quantify plant stress caused by oil pollution and it is possible to discriminate between this and other common stresses. However, further work is needed to refine and operationalise the approach, and the problems and challenges associated with this are presented and discussed.",
keywords = "MiAaPQ, Plant sciences., Botany.",
author = "Emengini, {Ebele Josephine}",
note = "Thesis (Ph.D.)--Lancaster University (United Kingdom), 2010.",
year = "2010",
language = "English",
publisher = "Lancaster University",
school = "Lancaster University",

}

RIS

TY - BOOK

T1 - Hyperspectral and Thermal Remote Sensing of Plant Stress Reponses to Oil Pollution.

AU - Emengini, Ebele Josephine

N1 - Thesis (Ph.D.)--Lancaster University (United Kingdom), 2010.

PY - 2010

Y1 - 2010

N2 - This study investigates the potential use of hyperspectral and thermal remote sensing for the early pre-visual detection and quantification of plant stress caused by oil pollution. Further, it examines the potential for these techniques to discriminate between oil pollution and two typically encountered plant stresses of waterlogging and water deficit. Results show that oil pollution, waterlogging and water deficit significantly decreased the physiological functions of plants and can result in pre-visual changes in spectral and thermal responses. Various spectral indices such as (R755-R716)/(R755+R716) and R800/R6O6 were efficient for the early detection of oil-induced stress in maize (up to 10 days earlier) and bean (up to 4 days earlier), respectively. These indices and other simple ratios of reflectance such as R673/R545 were also sensitive in the early detection (up to 6 days earlier) of stress symptoms caused by waterlogging in bean. The canopy absolute temperature and thermal index (IG) were good indicators of oil related stress in bean, but were insensitive to waterlogging. Absolute leaf temperature had minimal potential for detecting oil pollution in maize. While the spectral indices lacked ability for the early detection of stress caused by water deficit at the leaf scale in both maize and bean, absolute temperature was effective in this regard irrespective of scale of measurement. Results show that by combining spectral and thermal information, oil pollution can be discriminated from waterlogging or water deficit treatment. This study concludes that hyperspectral and thermal remote sensing have the potential to detect and quantify plant stress caused by oil pollution and it is possible to discriminate between this and other common stresses. However, further work is needed to refine and operationalise the approach, and the problems and challenges associated with this are presented and discussed.

AB - This study investigates the potential use of hyperspectral and thermal remote sensing for the early pre-visual detection and quantification of plant stress caused by oil pollution. Further, it examines the potential for these techniques to discriminate between oil pollution and two typically encountered plant stresses of waterlogging and water deficit. Results show that oil pollution, waterlogging and water deficit significantly decreased the physiological functions of plants and can result in pre-visual changes in spectral and thermal responses. Various spectral indices such as (R755-R716)/(R755+R716) and R800/R6O6 were efficient for the early detection of oil-induced stress in maize (up to 10 days earlier) and bean (up to 4 days earlier), respectively. These indices and other simple ratios of reflectance such as R673/R545 were also sensitive in the early detection (up to 6 days earlier) of stress symptoms caused by waterlogging in bean. The canopy absolute temperature and thermal index (IG) were good indicators of oil related stress in bean, but were insensitive to waterlogging. Absolute leaf temperature had minimal potential for detecting oil pollution in maize. While the spectral indices lacked ability for the early detection of stress caused by water deficit at the leaf scale in both maize and bean, absolute temperature was effective in this regard irrespective of scale of measurement. Results show that by combining spectral and thermal information, oil pollution can be discriminated from waterlogging or water deficit treatment. This study concludes that hyperspectral and thermal remote sensing have the potential to detect and quantify plant stress caused by oil pollution and it is possible to discriminate between this and other common stresses. However, further work is needed to refine and operationalise the approach, and the problems and challenges associated with this are presented and discussed.

KW - MiAaPQ

KW - Plant sciences.

KW - Botany.

M3 - Doctoral Thesis

PB - Lancaster University

CY - Lancaster

ER -