Abstract

Very high resolution satellite images allow automated monitoring of road traffic conditions. Satellite surveillance has several obvious advantages over current methods, which consist of expensive single-point measurements made from pressure sensors, video surveillance, etc., in/or close to the road. The main limitation of using satellite surveillance is the time resolution; the continuously changing traffic situation must be deduced from a snapshot image. In cooperation with the Norwegian Road Authorities, we have developed an approach for detection of vehicles in Quick-Bird images. The algorithm consists of a segmentation step followed by object-based maximum likelihood classification. Additionally, we propose a new approach for prediction of vehicle shadows. The shadow information is used as a contextual feature in order to improve classification. The correct classification rate was 89 percent, excluding noise samples. The proposed method tends to underestimate the number of vehicles when compared to manual counts and in-road equipment counts.

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