Full text: Proceedings International Workshop on Mobile Mapping Technology

m 
with those of the model top. In Figure 5(b), Region 41 does not 
match with the model region if one layer Hopfield neural 
network is used. However, its edges match with those of the 
model top in the line pattern layer of the two-layer Hopfield 
neural network. Region 41 is thus recognized properly. 
5. CONCLUSIONS 
In this paper, we introduced a two-layer Hopfield neural 
network for recognition of 3-D objects from AIMS imagery. In 
this approach, a 3-D object is back-projected onto an image 
with known interior and exterior orientation parameters. The 
extracted edges and regions are then matched with the back- 
projected features in a two-layer Hopfield neural network. The 
network considers the relationship of image regions and model 
regions and the similarity between image edges and model 
edges simultaneously. The experimental results of truck 
recognition showed very encouraging potential. The full result 
including truck velocity estimation is in Li et al. (1998b) at 
http://shoreline.eng.ohio-state.edu. 
6. ACKNOWLEDGMENTS 
We appreciate the Research Grants from the National Science 
Foundation (NSF CMS-9812783) and OSU Center for 
Mapping. AIMS data are provided by OSU Center for 
Mapping. 
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