Proceedings Article10.1117/12.317463
Computer vision for driver assistance systems
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TL;DR: A system which extracts the important information from an image taken by a CCD camera installed at the rear view mirror in a car by integrating the integrative coupling of different algorithms providing partly redundant information.
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Abstract: Systems for automated image analysis are useful for a variety of tasks and their importance is still increasing due to technological advances and an increase of social acceptance. Especially in the field of driver assistance systems the progress in science has reached a level of high performance. Fully or partly autonomously guided vehicles, particularly for road-based traffic, pose high demands on the development of reliable algorithms due to the conditions imposed by natural environments. At the Institut fur Neuroinformatik, methods for analyzing driving relevant scenes by computer vision are developed in cooperation with several partners from the automobile industry. We introduce a system which extracts the important information from an image taken by a CCD camera installed at the rear view mirror in a car. The approach consists of a sequential and a parallel sensor and information processing. Three main tasks namely the initial segmentation (object detection), the object tracking and the object classification are realized by integration in the sequential branch and by fusion in the parallel branch. The main gain of this approach is given by the integrative coupling of different algorithms providing partly redundant information.
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Citations
Kernel-based object tracking
TL;DR: A new approach toward target representation and localization, the central component in visual tracking of nonrigid objects, is proposed, which employs a metric derived from the Bhattacharyya coefficient as similarity measure, and uses the mean shift procedure to perform the optimization.
An image processing system for driver assistance
TL;DR: A system designed to extract information from an image acquired from an onboard CCD camera that involves integration and fusion in the sequential and parallel phases of sensor and information processing is described.
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•Journal Article
Object tracking
TL;DR: Object tracking means tracing the progress of objects (or object features) as they move about in a visual scene, which involves processing spatial and temporal changes.
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