Remote Sensing, Vol. 10, Pages 1485: Remotely Estimating Beneficial Arthropod Populations: Implications of a Low-Cost Small Unmanned Aerial System

Publication Date:
2018-09-19
Publisher:
MDPI Publishing
Electronic ISSN:
2072-4292
Topics:
Architecture, Civil Engineering, Surveying
Geography
Published by:
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autor Shereen S. Xavier; Alisa W. Coffin; Dawn M. Olson; Jason M. Schmidt
beschreibung Remote Sensing, Vol. 10, Pages 1485: Remotely Estimating Beneficial Arthropod Populations: Implications of a Low-Cost Small Unmanned Aerial System Remote Sensing doi: 10.3390/rs10091485 Authors: Shereen S. Xavier Alisa W. Coffin Dawn M. Olson Jason M. Schmidt Studies show that agricultural land requires investment in the habitat management of non-cropped areas to support healthy beneficial arthropods and the ecosystem services they provide. In a previous small plot study, we manually counted blooms over the season, and found that plots providing greater numbers of flowers supported significantly higher pollinator populations over that of spontaneous weed plots. Here, we examined the potential of deploying an inexpensive small unmanned aerial vehicle (UAV) as a tool to remotely estimate floral resources and corresponding pollinator populations. Data were collected from previously established native wildflower plots in 19 locations on the University of Georgia experimental farms in South Georgia, USA. A UAV equipped with a lightweight digital camera was deployed to capture images of the flowers during the months of June and September 2017. Supervised image classification using a geographic information system (GIS) was carried out on the acquired images, and classified images were used to evaluate the floral area. The floral area obtained from the images positively correlated with the floral counts gathered from the quadrat samples. Furthermore, the floral area derived from imagery significantly predicted pollinator populations, with a positive correlation indicating that plots with greater area of blooming flowers contained higher numbers of pollinators.
citation_standardnr 6334510
datenlieferant ipn_articles
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feed_publisher MDPI Publishing
feed_publisher_url http://www.mdpi.com/
insertion_date 2018-09-19
journaleissn 2072-4292
publikationsjahr_anzeige 2018
publikationsjahr_facette 2018
publikationsjahr_intervall 7984:2015-2019
publikationsjahr_sort 2018
publisher MDPI Publishing
quelle Remote Sensing
relation http://www.mdpi.com/2072-4292/10/9/1485
search_space articles
shingle_author_1 Shereen S. Xavier; Alisa W. Coffin; Dawn M. Olson; Jason M. Schmidt
shingle_author_2 Shereen S. Xavier; Alisa W. Coffin; Dawn M. Olson; Jason M. Schmidt
shingle_author_3 Shereen S. Xavier; Alisa W. Coffin; Dawn M. Olson; Jason M. Schmidt
shingle_author_4 Shereen S. Xavier; Alisa W. Coffin; Dawn M. Olson; Jason M. Schmidt
shingle_catch_all_1 Remote Sensing, Vol. 10, Pages 1485: Remotely Estimating Beneficial Arthropod Populations: Implications of a Low-Cost Small Unmanned Aerial System
Remote Sensing, Vol. 10, Pages 1485: Remotely Estimating Beneficial Arthropod Populations: Implications of a Low-Cost Small Unmanned Aerial System Remote Sensing doi: 10.3390/rs10091485 Authors: Shereen S. Xavier Alisa W. Coffin Dawn M. Olson Jason M. Schmidt Studies show that agricultural land requires investment in the habitat management of non-cropped areas to support healthy beneficial arthropods and the ecosystem services they provide. In a previous small plot study, we manually counted blooms over the season, and found that plots providing greater numbers of flowers supported significantly higher pollinator populations over that of spontaneous weed plots. Here, we examined the potential of deploying an inexpensive small unmanned aerial vehicle (UAV) as a tool to remotely estimate floral resources and corresponding pollinator populations. Data were collected from previously established native wildflower plots in 19 locations on the University of Georgia experimental farms in South Georgia, USA. A UAV equipped with a lightweight digital camera was deployed to capture images of the flowers during the months of June and September 2017. Supervised image classification using a geographic information system (GIS) was carried out on the acquired images, and classified images were used to evaluate the floral area. The floral area obtained from the images positively correlated with the floral counts gathered from the quadrat samples. Furthermore, the floral area derived from imagery significantly predicted pollinator populations, with a positive correlation indicating that plots with greater area of blooming flowers contained higher numbers of pollinators.
Shereen S. Xavier; Alisa W. Coffin; Dawn M. Olson; Jason M. Schmidt
MDPI Publishing
2072-4292
20724292
shingle_catch_all_2 Remote Sensing, Vol. 10, Pages 1485: Remotely Estimating Beneficial Arthropod Populations: Implications of a Low-Cost Small Unmanned Aerial System
Remote Sensing, Vol. 10, Pages 1485: Remotely Estimating Beneficial Arthropod Populations: Implications of a Low-Cost Small Unmanned Aerial System Remote Sensing doi: 10.3390/rs10091485 Authors: Shereen S. Xavier Alisa W. Coffin Dawn M. Olson Jason M. Schmidt Studies show that agricultural land requires investment in the habitat management of non-cropped areas to support healthy beneficial arthropods and the ecosystem services they provide. In a previous small plot study, we manually counted blooms over the season, and found that plots providing greater numbers of flowers supported significantly higher pollinator populations over that of spontaneous weed plots. Here, we examined the potential of deploying an inexpensive small unmanned aerial vehicle (UAV) as a tool to remotely estimate floral resources and corresponding pollinator populations. Data were collected from previously established native wildflower plots in 19 locations on the University of Georgia experimental farms in South Georgia, USA. A UAV equipped with a lightweight digital camera was deployed to capture images of the flowers during the months of June and September 2017. Supervised image classification using a geographic information system (GIS) was carried out on the acquired images, and classified images were used to evaluate the floral area. The floral area obtained from the images positively correlated with the floral counts gathered from the quadrat samples. Furthermore, the floral area derived from imagery significantly predicted pollinator populations, with a positive correlation indicating that plots with greater area of blooming flowers contained higher numbers of pollinators.
Shereen S. Xavier; Alisa W. Coffin; Dawn M. Olson; Jason M. Schmidt
MDPI Publishing
2072-4292
20724292
shingle_catch_all_3 Remote Sensing, Vol. 10, Pages 1485: Remotely Estimating Beneficial Arthropod Populations: Implications of a Low-Cost Small Unmanned Aerial System
Remote Sensing, Vol. 10, Pages 1485: Remotely Estimating Beneficial Arthropod Populations: Implications of a Low-Cost Small Unmanned Aerial System Remote Sensing doi: 10.3390/rs10091485 Authors: Shereen S. Xavier Alisa W. Coffin Dawn M. Olson Jason M. Schmidt Studies show that agricultural land requires investment in the habitat management of non-cropped areas to support healthy beneficial arthropods and the ecosystem services they provide. In a previous small plot study, we manually counted blooms over the season, and found that plots providing greater numbers of flowers supported significantly higher pollinator populations over that of spontaneous weed plots. Here, we examined the potential of deploying an inexpensive small unmanned aerial vehicle (UAV) as a tool to remotely estimate floral resources and corresponding pollinator populations. Data were collected from previously established native wildflower plots in 19 locations on the University of Georgia experimental farms in South Georgia, USA. A UAV equipped with a lightweight digital camera was deployed to capture images of the flowers during the months of June and September 2017. Supervised image classification using a geographic information system (GIS) was carried out on the acquired images, and classified images were used to evaluate the floral area. The floral area obtained from the images positively correlated with the floral counts gathered from the quadrat samples. Furthermore, the floral area derived from imagery significantly predicted pollinator populations, with a positive correlation indicating that plots with greater area of blooming flowers contained higher numbers of pollinators.
Shereen S. Xavier; Alisa W. Coffin; Dawn M. Olson; Jason M. Schmidt
MDPI Publishing
2072-4292
20724292
shingle_catch_all_4 Remote Sensing, Vol. 10, Pages 1485: Remotely Estimating Beneficial Arthropod Populations: Implications of a Low-Cost Small Unmanned Aerial System
Remote Sensing, Vol. 10, Pages 1485: Remotely Estimating Beneficial Arthropod Populations: Implications of a Low-Cost Small Unmanned Aerial System Remote Sensing doi: 10.3390/rs10091485 Authors: Shereen S. Xavier Alisa W. Coffin Dawn M. Olson Jason M. Schmidt Studies show that agricultural land requires investment in the habitat management of non-cropped areas to support healthy beneficial arthropods and the ecosystem services they provide. In a previous small plot study, we manually counted blooms over the season, and found that plots providing greater numbers of flowers supported significantly higher pollinator populations over that of spontaneous weed plots. Here, we examined the potential of deploying an inexpensive small unmanned aerial vehicle (UAV) as a tool to remotely estimate floral resources and corresponding pollinator populations. Data were collected from previously established native wildflower plots in 19 locations on the University of Georgia experimental farms in South Georgia, USA. A UAV equipped with a lightweight digital camera was deployed to capture images of the flowers during the months of June and September 2017. Supervised image classification using a geographic information system (GIS) was carried out on the acquired images, and classified images were used to evaluate the floral area. The floral area obtained from the images positively correlated with the floral counts gathered from the quadrat samples. Furthermore, the floral area derived from imagery significantly predicted pollinator populations, with a positive correlation indicating that plots with greater area of blooming flowers contained higher numbers of pollinators.
Shereen S. Xavier; Alisa W. Coffin; Dawn M. Olson; Jason M. Schmidt
MDPI Publishing
2072-4292
20724292
shingle_title_1 Remote Sensing, Vol. 10, Pages 1485: Remotely Estimating Beneficial Arthropod Populations: Implications of a Low-Cost Small Unmanned Aerial System
shingle_title_2 Remote Sensing, Vol. 10, Pages 1485: Remotely Estimating Beneficial Arthropod Populations: Implications of a Low-Cost Small Unmanned Aerial System
shingle_title_3 Remote Sensing, Vol. 10, Pages 1485: Remotely Estimating Beneficial Arthropod Populations: Implications of a Low-Cost Small Unmanned Aerial System
shingle_title_4 Remote Sensing, Vol. 10, Pages 1485: Remotely Estimating Beneficial Arthropod Populations: Implications of a Low-Cost Small Unmanned Aerial System
timestamp 2025-06-30T23:36:52.160Z
titel Remote Sensing, Vol. 10, Pages 1485: Remotely Estimating Beneficial Arthropod Populations: Implications of a Low-Cost Small Unmanned Aerial System
titel_suche Remote Sensing, Vol. 10, Pages 1485: Remotely Estimating Beneficial Arthropod Populations: Implications of a Low-Cost Small Unmanned Aerial System
topic ZH-ZI
R
uid ipn_articles_6334510