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Real-time, 3-D multi object position estimation and tracking

J. Kaszubiak, Michael Tornow, R. W. Kuhn, B. Michaelis

Year
2004
Citations
8

Abstract

For autonomously acting robots and driver assistance systems, powerful optical stereo sensor systems are required. Object positions and environmental conditions have to be acquired in real-time. A hardware-software co-design is applied, acting within the presented stereophotogrammetric system. For calculation of the depth map, an optimized algorithm is implemented as a hierarchical parallel hardware solution. By adapting the image resolution to the distance, real-time processing is possible. The object clustering and the tracking is realized in a processor. The density distribution of the disparity in the depth map (disparity histogram) is used for object detection. A Kalman filter stabilizes the parameters of the results.

Keywords

Computer visionArtificial intelligenceComputer sciencePosition (finance)Kalman filterObject (grammar)HistogramVideo trackingTracking (education)Object detection

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