8 research outputs found
Dimensionality Reduction and Classification feature using Mutual Information applied to Hyperspectral Images : A Filter strategy based algorithm
Hyperspectral images (HIS) classification is a high technical remote sensing
tool. The goal is to reproduce a thematic map that will be compared with a
reference ground truth map (GT), constructed by expecting the region. The HIS
contains more than a hundred bidirectional measures, called bands (or simply
images), of the same region. They are taken at juxtaposed frequencies.
Unfortunately, some bands contain redundant information, others are affected by
the noise, and the high dimensionality of features made the accuracy of
classification lower. The problematic is how to find the good bands to classify
the pixels of regions. Some methods use Mutual Information (MI) and threshold,
to select relevant bands, without treatment of redundancy. Others control and
eliminate redundancy by selecting the band top ranking the MI, and if its
neighbors have sensibly the same MI with the GT, they will be considered
redundant and so discarded. This is the most inconvenient of this method,
because this avoids the advantage of hyperspectral images: some precious
information can be discarded. In this paper we'll accept the useful redundancy.
A band contains useful redundancy if it contributes to produce an estimated
reference map that has higher MI with the GT.nTo control redundancy, we
introduce a complementary threshold added to last value of MI. This process is
a Filter strategy; it gets a better performance of classification accuracy and
not expensive, but less preferment than Wrapper strategy.Comment: 11 pages, 5 figures, journal pape
A Novel Filter Approach for Band Selection and Classification of Hyperspectral Remotely Sensed Images Using Normalized Mutual Information and Support Vector Machines
Band selection is a great challenging task in the classification of
hyperspectral remotely sensed images HSI. This is resulting from its high
spectral resolution, the many class outputs and the limited number of training
samples. For this purpose, this paper introduces a new filter approach for
dimension reduction and classification of hyperspectral images using
information theoretic (normalized mutual information) and support vector
machines SVM. This method consists to select a minimal subset of the most
informative and relevant bands from the input datasets for better
classification efficiency. We applied our proposed algorithm on two well-known
benchmark datasets gathered by the NASA's AVIRIS sensor over Indiana and
Salinas valley in USA. The experimental results were assessed based on
different evaluation metrics widely used in this area. The comparison with the
state of the art methods proves that our method could produce good performance
with reduced number of selected bands in a good timing.
Keywords: Dimension reduction, Hyperspectral images, Band selection,
Normalized mutual information, Classification, Support vector machinesComment: http://www.scopus.com/inward/record.url?eid=2-s2.0-85056469155&partnerID=MN8TOAR
Hyperspectral Images Classification and Dimensionality Reduction using spectral interaction and SVM classifier
Over the past decades, the hyperspectral remote sensing technology
development has attracted growing interest among scientists in various domains.
The rich and detailed spectral information provided by the hyperspectral
sensors has improved the monitoring and detection capabilities of the earth
surface substances. However, the high dimensionality of the hyperspectral
images (HSI) is one of the main challenges for the analysis of the collected
data. The existence of noisy, redundant and irrelevant bands increases the
computational complexity, induce the Hughes phenomenon and decrease the
target's classification accuracy. Hence, the dimensionality reduction is an
essential step to face the dimensionality challenges. In this paper, we propose
a novel filter approach based on the maximization of the spectral interaction
measure and the support vector machines for dimensionality reduction and
classification of the HSI. The proposed Max Relevance Max Synergy (MRMS)
algorithm evaluates the relevance of every band through the combination of
spectral synergy, redundancy and relevance measures. Our objective is to select
the optimal subset of synergistic bands providing accurate classification of
the supervised scene materials. Experimental results have been performed using
three different hyperspectral datasets: "Indiana Pine", "Pavia University" and
"Salinas" provided by the "NASA-AVIRIS" and the "ROSIS" spectrometers.
Furthermore, a comparison with the state of the art band selection methods has
been carried out in order to demonstrate the robustness and efficiency of the
proposed approach.
Keywords: Hyperspectral images, remote sensing, dimensionality reduction,
classification, synergic, correlation, spectral interaction information, mutual
infor
Supervised classification methods applied to airborne hyperspectral images: Comparative study using mutual information
Nowadays, the hyperspectral remote sensing imagery HSI becomes an important
tool to observe the Earth's surface, detect the climatic changes and many other
applications. The classification of HSI is one of the most challenging tasks
due to the large amount of spectral information and the presence of redundant
and irrelevant bands. Although great progresses have been made on
classification techniques, few studies have been done to provide practical
guidelines to determine the appropriate classifier for HSI. In this paper, we
investigate the performance of four supervised learning algorithms, namely,
Support Vector Machines SVM, Random Forest RF, K-Nearest Neighbors KNN and
Linear Discriminant Analysis LDA with different kernels in terms of
classification accuracies. The experiments have been performed on three real
hyperspectral datasets taken from the NASA's Airborne Visible/Infrared Imaging
Spectrometer Sensor AVIRIS and the Reflective Optics System Imaging
Spectrometer ROSIS sensors. The mutual information had been used to reduce the
dimensionality of the used datasets for better classification efficiency. The
extensive experiments demonstrate that the SVM classifier with RBF kernel and
RF produced statistically better results and seems to be respectively the more
suitable as supervised classifiers for the hyperspectral remote sensing images.
Keywords: hyperspectral images, mutual information, dimension reduction,
Support Vector Machines, K-Nearest Neighbors, Random Forest, Linear
Discriminant Analysis
A novel information gain-based approach for classification and dimensionality reduction of hyperspectral images
Recently, the hyperspectral sensors have improved our ability to monitor the
earth surface with high spectral resolution. However, the high dimensionality
of spectral data brings challenges for the image processing. Consequently, the
dimensionality reduction is a necessary step in order to reduce the
computational complexity and increase the classification accuracy. In this
paper, we propose a new filter approach based on information gain for
dimensionality reduction and classification of hyperspectral images. A special
strategy based on hyperspectral bands selection is adopted to pick the most
informative bands and discard the irrelevant and noisy ones. The algorithm
evaluates the relevancy of the bands based on the information gain function
with the support vector machine classifier. The proposed method is compared
using two benchmark hyperspectral datasets (Indiana, Pavia) with three
competing methods. The comparison results showed that the information gain
filter approach outperforms the other methods on the tested datasets and could
significantly reduce the computation cost while improving the classification
accuracy. Keywords: Hyperspectral images; dimensionality reduction; information
gain; classification accuracy.
Keywords: Hyperspectral images; dimensionality reduction; information gain;
classification accuracy