SCALE-DEPENDENT ADAPTATION OF IMAGE ANALYSIS MODELS
INCORPORATING LOCAL CONTEXT OBJECTS
Janet Heuwold, Kian Pakzad, Christian Heipke
Institute of Photogrammetry and Geolnformation, Leibniz Universität Hannover,
Nienburger Str. 1, D-30167 Hannover, Germany - (heuwold, pakzad, heipke)@ipi.uni-hannover.de
Commission III, WG III/4
KEY WORDS: Multiresolution, Scale Space, Modelling, Image Analysis, Interpretation, Urban, Method
ABSTRACT:
Local context objects have significant impact on object extraction from real aerial or satellite images, since occlusions or shadows
can substantially hinder a successful extraction of a particular landscape object one is interested in. This paper presents an adaptation
concept for image analysis object models considering local context objects to a lower image resolution. The scale-dependent
adaptation of local context poses a severe problem for an unambiguous scale behaviour prediction, as the exact position of local
context objects is generally unknown. However, by adapting the object models for the landscape object of interest and the local
context objects separately, the influence of this contradiction is avoided while the loss of the exact combined scale behaviour
prediction remains acceptable. An example for road extraction with vehicle as local context object demonstrates the capability of the
adaptation approach. To conclude, the assumptions for the adaptation methods and its limitations are discussed.
1. INTRODUCTION
A main prerequisite of knowledge-based image analysis from
aerial and satellite data is the availability of suitable models for
the extraction of relevant landscape objects. In the last decade
more and more sensors from space with very high spatial
resolution capabilities became available. The range of available
image resolution, thus, has been enlarged. An image scene
changes with different resolution: area-type features change to
lines or points, some details may get lost or small features
disappear, while other features may become more dominant and
important for the extraction of a particular object. As landscape
objects change their appearance in images of different image
resolutions, models for the extraction of landscape objects are in
general not applicable to another image resolution. Automatic
object extraction can require substantially different models for
different image resolutions, because of the large amount of
various details that are not visible or have merged with adjacent
objects in coarser image resolution. Therefore, the need for
different models for object extraction in different image
resolutions is growing as well.
Furthermore, the extraction process of a landscape object may
be severely influenced by local context objects, i.e. other near
by objects in the vicinity occluding the landscape object one is
interested in. For example, roads are often partly obstructed by
vehicles, trees, buildings or their shadows (cf. Figure 1). Then,
the extraction of the object of interest can fail, since some object
parts cannot be completely extracted due to the influence of
local context objects. Hence, modelling of a landscape object
only by its inherent features is often not sufficient for reliable
extraction results, but requires the incorporation of local context
objects.
A methodology for the automatic adaptation of image analysis
object models for 2D landscape objects represented in form of
semantic nets was developed previously (Heuwold et al., 2007)
using linear scale-space theory. This procedure is extended here
to incorporate additional local context objects. The context
objects are modelled as a semantic net as well with attributes
describing their appearance and their specific feature extraction
operators. While from the object models treated so far all parts
of the landscape object of interest and their relative position was
known, the presence and location of local context objects is
usually not. The location of local context objects can be
extremely variable and can mostly only be determined roughly,
if at all, in the image analysis model. This variability is
contradictory to a non-ambiguous scale behaviour prediction
based on position and needs to be accounted for in the
adaptation method. The extension of the existing method for the
scale-dependent adaptation of object models towards image
analysis considering additional local context objects is the topic
of this paper. Due to the high relevance for database update in
urban areas, our study focuses on road extraction with vehicles
as local context objects. However, the presented adaptation
concept enables the application to other landscape objects as
well.
The remainder of this paper is organized as follows: The next
section reviews related work concerning the automatic
adaptation of image analysis object models and the
incorporation of local context into object extraction. Section 3
derives the developed concept for the adaptation of object
models considering local context, while section 4 gives an
example for the adaptation of a road model incorporating
vehicles as local context. At the end of this paper, the results of
the example are discussed and conclusions are drawn.