id |
cf2009_328 |
authors |
Chen, Qunli; de Vries, Bauke |
year |
2009 |
title |
Human visual perceptions in built environment: Applying image-based approach for architectural cue recognition |
source |
T. Tidafi and T. Dorta (eds) Joining Languages, Cultures and Visions: CAADFutures 2009, PUM, 2009, pp. 328-341 |
summary |
This paper first presents a review on visual perception in the built environment and human vision simulation. Followed by the description of the Standard Feature Model of visual cortex (SFM), an architectural cue recognition model is proposed using SFM-based features. Based on the findings of the experiments it can be concluded that the visual differences between architectural cues are too subtle to realistically simulate human vision for the SFM model. |
keywords |
Architectural cue recognition, human vision simulation, built environment |
series |
CAAD Futures |
email |
|
full text |
file.pdf (2,029,615 bytes) |
references |
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last changed |
2009/06/08 20:53 |
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