The atmospheric infrared sounder (AIRS) exhibits great potential for providing atmospheric observation data for long-term regional and global carbon-cycle studies, which are essential for understanding the uncertainty of climate change. The sensitivity of global atmospheric CO 2 retrieval from the AIRS observations by quantifying errors related to CO 2 measurements in the infrared spectrum is investigated. A line-by-line radiative transfer model is used to evaluate the effects of atmospheric temperature profile, water vapor profile, and ozone (O 3 ) data on the accuracy of CO 2 measurements under five standard atmospheric models. The analytical results indicate that temperature, water vapor, and O 3 are important factors, which have great influences on the sensitivity of atmospheric CO 2 retrieval from the AIRS observations. The water vapor is the most important factor in the tropics, whereas the temperature represents major interference for multitude and subarctic regions. The results imply that precise measurements of temperature, water vapor, and O 3 can improve the quality of atmospheric CO 2 data retrieved from the AIRS observations.
Hyperspectral imagery has been widely used in terrain classification for its high resolution. Urban vegetation, known as an essential part of the urban ecosystem, can be difficult to discern due to high similarity of spectral signatures among some land-cover classes. In this paper, we investigate a hybrid approach of the genetic-algorithm tuned fuzzy support vector machine (GA-FSVM) technique and apply it to urban vegetation classification from aerial hyperspectral urban imagery. The approach adopts the genetic algorithm to optimize parameters of support vector machine, and employs the K-nearest neighbor algorithm to calculate the membership function for each fuzzy parameter, aiming to reduce the effects of the isolated and noisy samples. Test data come from push-broom hyperspectral imager (PHI) hyperspectral remote sensing image which partially covers a corner of the Shanghai World Exposition Park, while PHI is a hyper-spectral sensor developed by Shanghai Institute of Technical Physics. Experimental results show the GA-FSVM model generates overall accuracy of 71.2%, outperforming the maximum likelihood classifier with 49.4% accuracy and the artificial neural network method with 60.8% accuracy. It indicates GA-FSVM is a promising model for vegetation classification from hyperspectral urban data, and has good advantage in the application of classification involving abundant mixed pixels and small samples problem.
Hyperspectral remote sensing data has been widely used in Terrain Classification for its high resolution. The
classification of urban vegetation, identified as an indispensable and essential part of urban development system, is now
facing a major challenge as different complex land-cover classes having similar spectral signatures. For a better accuracy
in classification of urban vegetation, a classifier model was designed in this paper based on genetic algorithm (GA) and
support vector machine (SVM) to address the multiclass problem, and tests were made with the classification of PHI
hyperspectral remote sensing images acquired in 2003 which partially covers a corner of the Shanghai World Exposition
Park, while PHI is a hyper-spectral sensor developed by Shanghai Institute of Technical Physics.
SVM, based on statistical learning theory and structural risk minimization, is now widely used in classification in many
fields such as two-class classification, and also the multi-class classification later due to its superior performance. On the
other hand as parameters are very important factors affecting SVM's ability in classification, therefore, how to choose
the optimal parameters turned out to be one of the most urgent problems. In this paper, GA was used to acquire the
optimal parameters with following 3 steps. Firstly, useful training samples were selected according to the features of
hyperspectral images, to build the classifier model by applying radial basis function (RBF) kernel function and decision
Directed Acyclic Graph (DAG) strategy. Secondly, GA was introduced to optimize the parameters of SVM classification
model based on the gridsearch and Bayesian algorithm. Lastly, the proposed GA-SVM model was tested for results'
accuracy comparison with the maximum likelihood estimation and neural network model. Experimental results showed
that GA-SVM model performed better classified accuracy, indicating the coupling of GA and SVM model could
improve classification accuracy of hyperspectral remote sensing images, especially in vegetation classification.
Conference Committee Involvement (11)
Remote Sensing and Modeling of Ecosystems for Sustainability XV
22 August 2018 | San Diego, California, United States
Remote Sensing and Modeling of Ecosystems for Sustainability XIV
9 August 2017 | San Diego, California, United States
Remote Sensing and Modeling of Ecosystems for Sustainability XIII
31 August 2016 | San Diego, California, United States
Remote Sensing and Modeling of Ecosystems for Sustainability XII
11 August 2015 | San Diego, California, United States
Remote Sensing and Modeling of Ecosystems for Sustainability XI
18 August 2014 | San Diego, California, United States
Remote Sensing and Modeling of Ecosystems for Sustainability X
27 August 2013 | San Diego, California, United States
Remote Sensing and Modeling of Ecosystems for Sustainability IX
16 August 2012 | San Diego, California, United States
Remote Sensing and Modeling of Ecosystems for Sustainability VIII
23 August 2011 | San Diego, California, United States
Remote Sensing and Modeling of Ecosystems for Sustainability VII
3 August 2010 | San Diego, California, United States
Remote Sensing and Modeling of Ecosystems for Sustainability VI
5 August 2009 | San Diego, California, United States
Remote Sensing and Modeling of Ecosystems for Sustainability V
13 August 2008 | San Diego, California, United States
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