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Autori principali: Kamm, Matthew, Reed, J Michael
Natura: Dataset Open Access
Lingua:en
Pubblicazione: PANGAEA 2018
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Accesso online:https://doi.org/10.1594/PANGAEA.884660
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author Kamm, Matthew
Reed, J Michael
author_facet Kamm, Matthew
Reed, J Michael
collection Datos científicos de ciencias marinas y ambientales
contents Confusion matrices generated by program ENVI to evaluate the accuracy of Supervised Classification via a Maximum Likelihood method. Each of 12 sites was photographed at 25m and 50m heights by a Phantom 2 Vision+ quadcopter drone. Each 50m photo was also cropped to the same field of view as the 25m photo in order to examine effects of changes in image resolution with altitude. At 25m and 50m heights, different final image resolutions (kernel sizes, in pixels) were also recorded to compare. Each image was classified into a maximum of five different cover types, and the number of pixels correctly and incorrectly assigned to each cover category is recorded in the confusion matrix.
format Dataset Open Access
id pangaea_https___doi_org_10_1594_PANGAEA_884660
institution PANGAEA
language en
publishDate 2018
publisher PANGAEA
record_format pangaea
spellingShingle Confusion matrices evaluating the accuracy of supervised classification of habitat types in UAV aerial photos around American kestrel nest sites in Massachusetts, USA
Kamm, Matthew
Reed, J Michael
Massachusetts; MULT; Multiple investigations; United States; US-MA
Confusion matrices generated by program ENVI to evaluate the accuracy of Supervised Classification via a Maximum Likelihood method. Each of 12 sites was photographed at 25m and 50m heights by a Phantom 2 Vision+ quadcopter drone. Each 50m photo was also cropped to the same field of view as the 25m photo in order to examine effects of changes in image resolution with altitude. At 25m and 50m heights, different final image resolutions (kernel sizes, in pixels) were also recorded to compare. Each image was classified into a maximum of five different cover types, and the number of pixels correctly and incorrectly assigned to each cover category is recorded in the confusion matrix.
title Confusion matrices evaluating the accuracy of supervised classification of habitat types in UAV aerial photos around American kestrel nest sites in Massachusetts, USA
topic Massachusetts; MULT; Multiple investigations; United States; US-MA
url https://doi.org/10.1594/PANGAEA.884660