International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Volume XXXIX-B7, 2012
XXII ISPRS Congress, 25 August — 01 September 2012, Melbourne, Australia
LAND COVER CLASSIFICATION OF MULTI-SENSOR IMAGES BY DECISION
FUSION USING WEIGHTS OF EVIDENCE MODEL
Peijun Li * and Bengin Song
Institute of Remote Sensing and GIS, Peking University, Beijing 100871, P R China
Emails: pjli@pku.edu.cn, sbq43031@126.com
Commission VIL, WG VII/4
KEY WORDS: weights of evidence, multi-sensor, land cover classification, decision fusion
ABSTRACT:
This paper proposed a novel method of decision fusion based on weights of evidence model (WOE). The probability rules from
classification results from each separate dataset were fused using WOE to produce the posterior probability for each class. The final
classification was obtained by maximum probability. The proposed method was evaluated in land cover classification using two
examples. The results showed that the proposed method effectively combined multisensor data in land cover classification and
obtained higher classification accuracy than the use of single source data. The weights of evidence model provides an effective
decision fusion method for improved land cover classification using multi-sensor data.
1. INTRODUCTION
With the increasing availability of digital images acquired by
different sensors, it is crucially important to effectively process
and analyze these multisensor data sets in diverse applications,
since these data provide complementary information for
improved land cover mapping and monitoring. The development
of new and effective image fusion methods has been one of the
important topics in remote sensing information processing and
applications. This study proposes a novel decision fusion method
based on the weights of evidence model (Good, 1985;
Spiegelhalter and Knill-Jones, 1983) to combine multi-sensor
data for improved land cover classification.
2. METHODS
The proposed method can be summarized as follows. The land
cover classification was first separately conducted on each
dataset using a supervised classifier. The obtained classification
results from different datasets were then fused using the weights
of evidence model.
2.1 Weight of evidence model
The weights of evidence model is a data integration method. The
model was originally developed for medical diagnosis based on
presence or absence of a set of symptoms (Good, 1985;
Spiegelhalter and Knill-Jones, 1983), and was subsequently
adopted for mineral potential mapping (Bonham-Carter et al.,
1988, 1989).
The weights of evidence method used in this study is derived
from those used in medical diagnostics. Suppose that there are
E.i=12,..0
multiple source of evidence. Let , be the ith
binary evidence which is related to the occurrence of a class, i.e.
* Corresponding author.
an event D. E and E denote the presence and absence of the
evidence, respectively. The probability of the occurrence of a
class in a location (pixel), given the presence and absence of the
evidence E; can be given by the following conditional
probabilities:
P(DNE;) P(E, | D)
PAR EN ( EY
gj. PonE) | 5E 1D)
A I EE],
i
(D
These two equations can be also expressed in terms of the odd:
(DE) - o0).
olpiE)- otn
: (2)
Where O(D |E ;) and O(D | E 3 are ratio of the posterior
probabilities of D given the absence and presence of the
evidence E. :
The weights for evidence E ; in a WOE model are calculated
ran £1»)
P(E,|D)
i Fl? |p)
; P(E | D) "