Feedback between Low-level and High- level Image Processing
نویسندگان
چکیده
Scene interpretation systems are often conceived as extensions of low-level image analysis with bottom-up processing for high-level interpretations. In this paper we show how a generic high-level interpretation system can generate hypotheses and start top-down analysis. This allows for spatially focussed and specifically parametrised image analysis steps. Experimental results of the recognition of structures in building facades are reported.
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