Adaboost Clustering In Defining Los Criteria of Mumbai City
Matlab airborne vehicle detection in dense urban areas using ho g features and disparity maps
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AIRBORNE VEHICLE DETECTION IN DENSE URBAN AREAS USING HOG
FEATURES AND DISPARITY MAPS
ABSTRACT:
Vehicle detection has been an important research field for years as there are a lot of valuable
applications, ranging from support of traffic planners to real-time traffic management. Especially
detection of cars in dense urban areas is of interest due to the high traffic volume and the limited
space. In city areas many car-like objects (e.g., dormers) appear which might lead to confusion.
Additionally, the inaccuracy of road databases supporting the extraction process has to be
handled in a proper way.
This paper describes an integrated real-time processing chain which utilizes multiple occurrence
of objects in images. At least two subsequent images, data of exterior orientation, a global DEM,
and a road database are used as input data. The segments of the road database are projected in the
non-geocoded image using the corresponding height information from the global DEM. From
amply masked road areas in both images a disparity map is calculated. This map is used to
exclude elevated objects above a certain height (e.g., buildings and vegetation).
Finally, homogeneous areas are excluded by a fast region growing algorithm. Remaining parts of
one input image are classified based on the ‘Histogram of oriented Gradients (HoG)’ features.
The implemented approach has been verified using image sections from two different flights and
manually extracted ground truth data from the inner city of Munich. The evaluation shows a
quality of up to 70 percent.