2018
DOI: 10.3390/rs10122047
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Identifying Mangrove Species Using Field Close-Range Snapshot Hyperspectral Imaging and Machine-Learning Techniques

Abstract: Investigating mangrove species composition is a basic and important topic in wetland management and conservation. This study aims to explore the potential of close-range hyperspectral imaging with a snapshot hyperspectral sensor for identifying mangrove species under field conditions. Specifically, we assessed the data pre-processing and transformation, waveband selection and machine-learning techniques to develop an optimal classification scheme for eight mangrove species in Qi'ao Island of Zhuhai, Guangdong,… Show more

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Cited by 40 publications
(17 citation statements)
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“…The total number of samples correctly classified was divided by the total number of validation samples to calculate the overall accuracy. We also calculated user accuracy (UA), producer accuracy (PA) and Kappa coefficient, respectively [45,46]. The dynamic degrees of LULC can directly reflect the range and speed of changes in LULC types [47].…”
Section: Classification and Accuracy Assessment Methodsmentioning
confidence: 99%
“…The total number of samples correctly classified was divided by the total number of validation samples to calculate the overall accuracy. We also calculated user accuracy (UA), producer accuracy (PA) and Kappa coefficient, respectively [45,46]. The dynamic degrees of LULC can directly reflect the range and speed of changes in LULC types [47].…”
Section: Classification and Accuracy Assessment Methodsmentioning
confidence: 99%
“…The major sources of hyperspectral data for mangrove species discrimination are portal, airborne, and space-borne spectral radiometer. For example, in-situ measurement from portal spectral radiometer were usually conducted for the assessment of spectral differences among mangrove species and for the validation of spectral information obtained via space-borne spectral radiometer [21][22][23][24][25], which cannot be applied over large scale. Airborne platform can overcome the limitation of large coverage to some extent when compared to in-situ measurement, such as CASI [26] and AVIRIS [27], but the shortage of battery endurance makes it difficult to monitor mangrove over larger areas.…”
Section: Introductionmentioning
confidence: 99%
“…LDA has been widely used in a variety of classification studies [7,29,30]. LDA is a statistical technique to classify objects into two groups based on a set of predictors with specific threshold values.…”
Section: Linear Discriminant Analysis (Lda)mentioning
confidence: 99%