Ein Bildsensor bildet Lichtmuster auf mehrdimensionale Messsignale ab. Aus diesen primären Messungen werden anschließend mittels Bildauswerteverfahren sekundäre Messgrößen extrahiert, wie beispielsweise die Positionen, die Geschwindigkeiten oder die Art interessierender Objekte.
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Stiller, C., Bachmann, A., Duchow, C. (2009). Maschinelles Sehen. In: Winner, H., Hakuli, S., Wolf, G. (eds) Handbuch Fahrerassistenzsysteme. Vieweg+Teubner. https://doi.org/10.1007/978-3-8348-9977-4_16
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