International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Volume XXXIX-B3, 2012
XXII ISPRS Congress, 25 August — 01 September 2012, Melbourne, Australia
Figure 2. Spot5-HRS times series. Illustration for the Hispaniola test area € CNES
Contrary to airborne sensors and as illustrated in Figure 1, it is
difficult to acquire satellite images without any cloud,
especially in areas such as the French overseas territories (e.g.
Guyane, Martinique, Guadeloupe) where the cloud cover is
known to be important all year round. To limit this problem,
providers of satellite data generally wait for a favourable
weather window so that the cloud cover is minimal. However,
this solution is not operable in areas (e.g. Guyane) that are
almost always nebulous. Here, the solution, already mentioned
above, consists in acquiring images regardless the weather
conditions. That results in obtaining time series i.e. a pile of
satellite images with a high number of images, as depicted in
Figure 2 for our Hispaniola test area. If this solution involves
difficult pos-procedures for generating a virtual cloud-free
satellite image from those contained in time series, it also
presents the advantage of maximizing the acquisition capability
of the satellite. This is the main reason why this acquisition
configuration is considered by an increasing number of satellite
data providers. In our project, we assumed to have such multi-
temporal satellite images and we built our cloud detection
system upon this hypothesis.
Until now, the analysis of satellite images for cloud
identification and removal has been carried out manually. That
entails a long, fastidious and costly work. As a consequence, it
becomes necessary to introduce a certain degree of automation
in the cloud detection procedure i.e. to develop expert systems
that are able to focus the operator's attention on potential cloud
areas.
1.1 Related works
In the last few years, many researches have been carried out to
automate the cloud detection in satellite images.
Some works can be found in the meteorology community, for
example in the paper by Derrien and Le Gléau (2010) who
propose to combine a temporal analysis to a region-growing
technique in order to improve the detection of low clouds at
twilight. If this work appears to be interesting, the meteorology
context appears to be very different from the context generally
considered in the geoscience community. Thus, the images used
542
in the above-mentioned project are delivered by the SEVIRI
system that offers 11 spectral bands (including thermal bands), a
high temporal resolution (one image every 15 minutes) but a
low spatial resolution (3km at nadir). By contrast, the images
used in the geoscience community generally offer fewer spectral
channels but a better spatial resolution, with a Ground Sample
Distance (GSD) of e.g. 5m for SPOTS-HRS, 70cm for Pléiades
and 50cm for Worldview.
Most of the cloud detection approaches found in the geoscience
literature are dedicated to single-date satellite images (Irish,
2000) (Irish et al, 2006) (Le Hégarat and André, 2009). By
contrast, only a few of them make a full use of multi-temporal
satellite images. In this category, the method by Sedano et al.
(2011), originally designed for single-date High-Resolution
images, uses information from multi-temporal Low-Resolution
MODIS images in order to perform the cloud detection. Thus,
the difference between MODIS and input images is analysed to
extract the seed points that correspond to clouds, which are then
used in a subsequent region-growing procedure in order to
delineate clouds finely. The main drawback of the method is
related to the low resolution of MODIS images (featured by a
GSD of 250m) that makes the detection of small clouds
impossible. Multi-temporal LANDSAT and FORMOSAT-2
images are used in (Hagolle et al., 2010). The extraction of
cloud pixels is here based on the assumption that a sudden
increase of reflectance in the blue band between two images is
due to the presence of a cloud. This leads to the computation of
a preliminary cloud mask that is then refined using additional
radiometric tests, performed on the remaining bands. If this
method is shown to give good results, it is limited to the
availability of several bands and can also not be used in every
context, especially when using panchromatic SPOTS-HRS
images.
1.2 Presentation
The main goal of this paper is to present the method developed
at the French Mapping Agency for identifying and delineating
clouds in High Resolution multi-temporal satellite images. We
here propose to couple the ideas of the papers by Sedano et al.
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