Early Detection of Crop Injury from Glyphosate on Soybean and Cotton Using Plant Leaf Hyperspectral Data

In this paper, we aim to detect crop injury from glyphosate, a herbicide, by both traditionally used spectral indices and newly extracted features with leaf hyperspectral reflectance data for non-Glyphosate-Resistant (non-GR) soybean and non-GR cotton. The new features were extracted by canonical an...

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Main Authors: Feng Zhao, Yanbo Huang, Yiqing Guo, Krishna N. Reddy, Matthew A. Lee, Reginald S. Fletcher, Steven J. Thomson
Format: Article
Language:English
Published: MDPI AG 2014-02-01
Series:Remote Sensing
Subjects:
Online Access:http://www.mdpi.com/2072-4292/6/2/1538
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spelling doaj-e8b114916001457f90c2c59ce77179a72020-11-25T00:01:34ZengMDPI AGRemote Sensing2072-42922014-02-01621538156310.3390/rs6021538rs6021538Early Detection of Crop Injury from Glyphosate on Soybean and Cotton Using Plant Leaf Hyperspectral DataFeng Zhao0Yanbo Huang1Yiqing Guo2Krishna N. Reddy3Matthew A. Lee4Reginald S. Fletcher5Steven J. Thomson6School of Instrumentation Science and Opto-Electronics Engineering, Beihang University, Beijing 100191, ChinaUSDA-Agricultural Research Service, Crop Production Systems Research Unit, 141 Experiment Station Road, Stoneville, MS 38776, USASchool of Instrumentation Science and Opto-Electronics Engineering, Beihang University, Beijing 100191, ChinaUSDA-Agricultural Research Service, Crop Production Systems Research Unit, 141 Experiment Station Road, Stoneville, MS 38776, USAUSDA-Agricultural Research Service, Crop Production Systems Research Unit, 141 Experiment Station Road, Stoneville, MS 38776, USAUSDA-Agricultural Research Service, Crop Production Systems Research Unit, 141 Experiment Station Road, Stoneville, MS 38776, USAUSDA-Agricultural Research Service, Crop Production Systems Research Unit, 141 Experiment Station Road, Stoneville, MS 38776, USAIn this paper, we aim to detect crop injury from glyphosate, a herbicide, by both traditionally used spectral indices and newly extracted features with leaf hyperspectral reflectance data for non-Glyphosate-Resistant (non-GR) soybean and non-GR cotton. The new features were extracted by canonical analysis technique, which could provide the largest separability to distinguish the injured leaves from the healthy ones. Spectral bands used for constructing these new features were selected based on the sensitivity analysis results of a physically-based leaf radiation transfer model (leaf optical PROperty SPECTra model, PROSPECT), which could help extend the effectiveness of these features to a wide range of leaf structures and growing conditions. This approach has been validated with greenhouse measured data acquired in glyphosate treatment experiments. Results indicated that glyphosate injury could be detected by NDVI (Normalized Difference Vegetation Index), RVI (Ratio Vegetation Index), SAVI (Soil Adjusted Vegetation Index), and DVI (Difference Vegetation Index) in 48 h After the Treatment (HAT) for soybean and in 72 HAT for cotton, but the other spectral indices either showed little use for separation, or did not show consistent separation for healthy and injured soybean and cotton. Compared with the traditional spectral indices, the new features were more feasible for the early detection of glyphosate injury, with leaves sprayed with a higher rate of glyphosate solution having larger feature values. This trend became more and more pronounced with time. Leaves sprayed with different glyphosate rates showed some separability 24 HAT using the new features and could be totally distinguished at and beyond 48 HAT for both soybean and cotton. These findings demonstrated the feasibility of applying leaf hyperspectral reflectance measurements for the early detection of glyphosate injury using these newly proposed features.http://www.mdpi.com/2072-4292/6/2/1538crop injuryherbicideglyphosateleaf reflectancespectral indicessensitivity analysiscanonical analysis
collection DOAJ
language English
format Article
sources DOAJ
author Feng Zhao
Yanbo Huang
Yiqing Guo
Krishna N. Reddy
Matthew A. Lee
Reginald S. Fletcher
Steven J. Thomson
spellingShingle Feng Zhao
Yanbo Huang
Yiqing Guo
Krishna N. Reddy
Matthew A. Lee
Reginald S. Fletcher
Steven J. Thomson
Early Detection of Crop Injury from Glyphosate on Soybean and Cotton Using Plant Leaf Hyperspectral Data
Remote Sensing
crop injury
herbicide
glyphosate
leaf reflectance
spectral indices
sensitivity analysis
canonical analysis
author_facet Feng Zhao
Yanbo Huang
Yiqing Guo
Krishna N. Reddy
Matthew A. Lee
Reginald S. Fletcher
Steven J. Thomson
author_sort Feng Zhao
title Early Detection of Crop Injury from Glyphosate on Soybean and Cotton Using Plant Leaf Hyperspectral Data
title_short Early Detection of Crop Injury from Glyphosate on Soybean and Cotton Using Plant Leaf Hyperspectral Data
title_full Early Detection of Crop Injury from Glyphosate on Soybean and Cotton Using Plant Leaf Hyperspectral Data
title_fullStr Early Detection of Crop Injury from Glyphosate on Soybean and Cotton Using Plant Leaf Hyperspectral Data
title_full_unstemmed Early Detection of Crop Injury from Glyphosate on Soybean and Cotton Using Plant Leaf Hyperspectral Data
title_sort early detection of crop injury from glyphosate on soybean and cotton using plant leaf hyperspectral data
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2014-02-01
description In this paper, we aim to detect crop injury from glyphosate, a herbicide, by both traditionally used spectral indices and newly extracted features with leaf hyperspectral reflectance data for non-Glyphosate-Resistant (non-GR) soybean and non-GR cotton. The new features were extracted by canonical analysis technique, which could provide the largest separability to distinguish the injured leaves from the healthy ones. Spectral bands used for constructing these new features were selected based on the sensitivity analysis results of a physically-based leaf radiation transfer model (leaf optical PROperty SPECTra model, PROSPECT), which could help extend the effectiveness of these features to a wide range of leaf structures and growing conditions. This approach has been validated with greenhouse measured data acquired in glyphosate treatment experiments. Results indicated that glyphosate injury could be detected by NDVI (Normalized Difference Vegetation Index), RVI (Ratio Vegetation Index), SAVI (Soil Adjusted Vegetation Index), and DVI (Difference Vegetation Index) in 48 h After the Treatment (HAT) for soybean and in 72 HAT for cotton, but the other spectral indices either showed little use for separation, or did not show consistent separation for healthy and injured soybean and cotton. Compared with the traditional spectral indices, the new features were more feasible for the early detection of glyphosate injury, with leaves sprayed with a higher rate of glyphosate solution having larger feature values. This trend became more and more pronounced with time. Leaves sprayed with different glyphosate rates showed some separability 24 HAT using the new features and could be totally distinguished at and beyond 48 HAT for both soybean and cotton. These findings demonstrated the feasibility of applying leaf hyperspectral reflectance measurements for the early detection of glyphosate injury using these newly proposed features.
topic crop injury
herbicide
glyphosate
leaf reflectance
spectral indices
sensitivity analysis
canonical analysis
url http://www.mdpi.com/2072-4292/6/2/1538
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