2016
DOI: 10.5194/isprs-archives-xli-b7-903-2016
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Does the Data Resolution/Origin Matter? Satellite, Airborne and Uav Imagery to Tackle Plant Invasions

Abstract: ABSTRACT:Invasive plant species represent a serious threat to biodiversity and landscape as well as human health and socio-economy. To successfully fight plant invasions, new methods enabling fast and efficient monitoring, such as remote sensing, are needed. In an ongoing project, optical remote sensing (RS) data of different origin (satellite, aerial and UAV), spectral (panchromatic, multispectral and color), spatial (very high to medium) and temporal resolution, and various technical approaches (object-, pix… Show more

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Cited by 21 publications
(18 citation statements)
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“…The point based accuracy assessment results illustrated that the supervised image classifiers evaluated in this study generally produced better user and overall accuracies than the unsupervised classifiers for mapping H. pomanensis. The poor performance of the unsupervised image classifiers could be attributed to the low spectral resolution (approximately 100nm wide bands) of the utilized UAV imagery [53]. The evaluated unsupervised image classifiers depend only on the spectral resolution of the imagery because they make use of a linear comparison to assign a pixel/segment to a class according to a similarity measure that only takes into account a spectral mean or a median vector of the pixel/segment without taking into consideration textural and spatial information [41].…”
Section: Discussionmentioning
confidence: 99%
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“…The point based accuracy assessment results illustrated that the supervised image classifiers evaluated in this study generally produced better user and overall accuracies than the unsupervised classifiers for mapping H. pomanensis. The poor performance of the unsupervised image classifiers could be attributed to the low spectral resolution (approximately 100nm wide bands) of the utilized UAV imagery [53]. The evaluated unsupervised image classifiers depend only on the spectral resolution of the imagery because they make use of a linear comparison to assign a pixel/segment to a class according to a similarity measure that only takes into account a spectral mean or a median vector of the pixel/segment without taking into consideration textural and spatial information [41].…”
Section: Discussionmentioning
confidence: 99%
“…This is explained by the generally low user and producer accuracies for the K-mediuns, Euclidian length and Isoseg classifiers. On the other hand, the supervised classifiers make use of probability models to assign pixels/segments to a class and that is why they outperformed their unsupervised counterparts for classifying low spectral resolution UAV imagery [53,54]. In addition to the probabilistic models, supervised image classifiers make use of training data-sets to guide the classifier using not only single pixels/segments but a sample group of pixels/segments to train the classifier through machine learning [50].…”
Section: Discussionmentioning
confidence: 99%
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“…Moreover, extremely high detail of UAV data generates problems with precise location of validation data due to the limits of available GNSS instruments (especially in forested or hilly environments). Still, despite these limits, the UAV technology holds great potential for invasive species assessment and monitoring (Calviño-Cancela et al, 2014; Michez et al, 2016; Müllerová et al, 2016, 2017; Table 1). …”
Section: Introductionmentioning
confidence: 99%
“…Unmanned Aerial Systems (UAS), popularly known as drones, introduce a new remote sensing technique that may become an applicable and affordable alternative to conventional approaches, as they reduce costs and increase the spatial resolution of aerial images (Wan et al, 2014;Dvořák et al, 2015;Chabot et al, 2016;Hill et al, 2016;Müllerová et al, 2016Müllerová et al, , 2017. The technical development, component miniaturization, and increased sales in recent years resulted in the rapid growth of UAS as an environmental remote-sensing platform.…”
Section: Introductionmentioning
confidence: 99%