Unsupervised Segmentation of Hyperspectral Images based on
Dominant Edges
Sangwook Lee, Sanghun Lee and Chulhee Lee
Department of Electrical and Electronic Engineering, Yonsei University, 50, Yonsei-ro, Seodaemun-gu, Seoul, Korea
Keywords: Segmentation, Hyperspectral Images, PCA, Dominant Edges.
Abstract: In this paper, we propose a new unsupervised segmentation method for hyperspectral images based on
dominant edge information. In the proposed algorithm, we first apply the principal component analysis and
select the dominant eigenimages. Then edge operators and the histogram equalizer are applied to the
selected eigenimages, which produces edge images. By combining these edge images, we obtain a binary
edge image. Morphological operations are then applied to these binary edge image to remove erroneous
edges. Experimental results show that the proposed algorithm produced satisfactory results without any user
input.
1 INTRODUCTION
Hyperspectral images have been successfully used in
many remote sensing applications, which include
classifications (Guo, 2006), target detections and
environment monitoring (Wang, 2003). In
automated processing of remotely sensed images,
segmentation is an important first step. With good
unsupervised segmentation algorithms, it is
generally possible to enhance the performance of
many operations (Cao, 2007).
In general, the goal of segmentation is to divide
images into their constituent regions. However, in
natural scenes, images often contain roads, tree,
buildings, fields, ponds, etc. Furthermore, there may
be no clear boundaries between the different regions.
Consequently, segmentation can be a complex and
difficult operation. The segmentation process can be
either unsupervised or supervised. Supervised
segmentation methods require training data and the
application areas of these methods are rather limited.
However, unsupervised segmentation methods,
which do not require any advanced information,
have larger application areas.
Among the various unsupervised segmentation
methods, the clustering technique has been most
widely used. This technique includes the k-means
method and the ISODATA method (Roberts 1997,
Meyer 2003). However, it is difficult to apply these
methods to hyperspectral images due to prohibitive
computational costs and the difficulty of selecting
initial points. Furthermore, performance can be
rather limited. Efforts have been made to develop
segmentation algorithms for hyperspectral images.
The morphological method has been proposed to
segment hyperspectral images, which use pixel
similarities (Pesaresi 2001). A MRF (Markov
Random Field) model segmentation method has
been proposed, which was based on capturing the
intrinsic characteristics of tonal and textural regions
(Sarkar 2002). In order to segment hyperspectral
images accurately, a number of techniques have
been employed, such as mutual information, phase
correlation and convex cone analysis (Guo 2006,
Erturk 2006, Ifrarraguerri 1999). Statistical
segmentation methods have also used a Gaussian
mixture model and stochastic estimation
maximization (Acito 2000, Masson 1993). Recently,
segmentation based on watershed transformation has
been proposed (Tarabalka 2010) and Tarabalka et al.
proposed a segmentation and classification method
using automatically selected markers (Tarabalka
2010).
In this paper, we propose a new unsupervised
segmentation method, which is based on edge
information and utilizes a post-processing technique
to improve segmentation results.
588
Lee S., Lee S. and Lee C..
Unsupervised Segmentation of Hyperspectral Images based on Dominant Edges.
DOI: 10.5220/0004739705880592
In Proceedings of the 9th International Conference on Computer Vision Theory and Applications (VISAPP-2014), pages 588-592
ISBN: 978-989-758-003-1
Copyright
c
2014 SCITEPRESS (Science and Technology Publications, Lda.)