Evaluation of Cotton Emergence Using UAV-Based Narrow-Band Spectral Imagery with Customized Image Alignment and Stitching Algorithms

Crop stand count and uniformity are important measures for making proper field management decisions to improve crop production. Conventional methods for evaluating stand count based on visual observation are time consuming and labor intensive, making it difficult to adequately cover a large field. T...

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Main Authors: Aijing Feng, Jianfeng Zhou, Earl Vories, Kenneth A. Sudduth
Format: Article
Language:English
Published: MDPI AG 2020-05-01
Series:Remote Sensing
Subjects:
Online Access:https://www.mdpi.com/2072-4292/12/11/1764
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author Aijing Feng
Jianfeng Zhou
Earl Vories
Kenneth A. Sudduth
author_facet Aijing Feng
Jianfeng Zhou
Earl Vories
Kenneth A. Sudduth
author_sort Aijing Feng
collection DOAJ
description Crop stand count and uniformity are important measures for making proper field management decisions to improve crop production. Conventional methods for evaluating stand count based on visual observation are time consuming and labor intensive, making it difficult to adequately cover a large field. The overall goal of this study was to evaluate cotton emergence at two weeks after planting using unmanned aerial vehicle (UAV)-based high-resolution narrow-band spectral indices that were collected using a pushbroom hyperspectral imager flying at 50 m above ground. A customized image alignment and stitching algorithm was developed to process hyperspectral cubes efficiently and build panoramas for each narrow band. The normalized difference vegetation index (NDVI) was calculated to segment cotton seedlings from soil background. A Hough transform was used for crop row identification and weed removal. Individual seedlings were identified based on customized geometric features and used to calculate stand count. Results show that the developed alignment and stitching algorithm had an average alignment error of 2.8 pixels, which was much smaller than that of 181 pixels from the associated commercial software. The system was able to count the number of seedlings in seedling clusters with an accuracy of 84.1%. Mean absolute percentage error (MAPE) in estimation of crop density at the meter level was 9.0%. For seedling uniformity evaluation, the MAPE of seedling spacing was 9.1% and seedling spacing standard deviation was 6.8%. Results showed that UAV-based high-resolution narrow-band spectral images had the potential to evaluate cotton emergence.
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spelling doaj.art-f16a1b3006e842c6b5e25636201e3e9f2023-11-20T02:15:31ZengMDPI AGRemote Sensing2072-42922020-05-011211176410.3390/rs12111764Evaluation of Cotton Emergence Using UAV-Based Narrow-Band Spectral Imagery with Customized Image Alignment and Stitching AlgorithmsAijing Feng0Jianfeng Zhou1Earl Vories2Kenneth A. Sudduth3Division of Food Systems and Bioengineering, University of Missouri, Columbia, MO 65211, USADivision of Food Systems and Bioengineering, University of Missouri, Columbia, MO 65211, USACropping Systems and Water Quality Research Unit, US Department of Agriculture Agricultural Research Service (USDA-ARS), Portageville, MO 63873, USACropping Systems and Water Quality Research Unit, USDA-ARS, Columbia, MO 65211, USACrop stand count and uniformity are important measures for making proper field management decisions to improve crop production. Conventional methods for evaluating stand count based on visual observation are time consuming and labor intensive, making it difficult to adequately cover a large field. The overall goal of this study was to evaluate cotton emergence at two weeks after planting using unmanned aerial vehicle (UAV)-based high-resolution narrow-band spectral indices that were collected using a pushbroom hyperspectral imager flying at 50 m above ground. A customized image alignment and stitching algorithm was developed to process hyperspectral cubes efficiently and build panoramas for each narrow band. The normalized difference vegetation index (NDVI) was calculated to segment cotton seedlings from soil background. A Hough transform was used for crop row identification and weed removal. Individual seedlings were identified based on customized geometric features and used to calculate stand count. Results show that the developed alignment and stitching algorithm had an average alignment error of 2.8 pixels, which was much smaller than that of 181 pixels from the associated commercial software. The system was able to count the number of seedlings in seedling clusters with an accuracy of 84.1%. Mean absolute percentage error (MAPE) in estimation of crop density at the meter level was 9.0%. For seedling uniformity evaluation, the MAPE of seedling spacing was 9.1% and seedling spacing standard deviation was 6.8%. Results showed that UAV-based high-resolution narrow-band spectral images had the potential to evaluate cotton emergence.https://www.mdpi.com/2072-4292/12/11/1764stand countseedling uniformityunmanned aerial vehiclehyperspectral image processingimage alignment and stitching
spellingShingle Aijing Feng
Jianfeng Zhou
Earl Vories
Kenneth A. Sudduth
Evaluation of Cotton Emergence Using UAV-Based Narrow-Band Spectral Imagery with Customized Image Alignment and Stitching Algorithms
Remote Sensing
stand count
seedling uniformity
unmanned aerial vehicle
hyperspectral image processing
image alignment and stitching
title Evaluation of Cotton Emergence Using UAV-Based Narrow-Band Spectral Imagery with Customized Image Alignment and Stitching Algorithms
title_full Evaluation of Cotton Emergence Using UAV-Based Narrow-Band Spectral Imagery with Customized Image Alignment and Stitching Algorithms
title_fullStr Evaluation of Cotton Emergence Using UAV-Based Narrow-Band Spectral Imagery with Customized Image Alignment and Stitching Algorithms
title_full_unstemmed Evaluation of Cotton Emergence Using UAV-Based Narrow-Band Spectral Imagery with Customized Image Alignment and Stitching Algorithms
title_short Evaluation of Cotton Emergence Using UAV-Based Narrow-Band Spectral Imagery with Customized Image Alignment and Stitching Algorithms
title_sort evaluation of cotton emergence using uav based narrow band spectral imagery with customized image alignment and stitching algorithms
topic stand count
seedling uniformity
unmanned aerial vehicle
hyperspectral image processing
image alignment and stitching
url https://www.mdpi.com/2072-4292/12/11/1764
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