The Effect of Indexing on the Complexity of Object Recognition


Autoria(s): Grimson, W. Eric L.
Data(s)

04/10/2004

04/10/2004

01/04/1990

Resumo

Many current recognition systems use constrained search to locate objects in cluttered environments. Previous formal analysis has shown that the expected amount of search is quadratic in the number of model and data features, if all the data is known to come from a sinlge object, but is exponential when spurious data is included. If one can group the data into subsets likely to have come from a single object, then terminating the search once a "good enough" interpretation is found reduces the expected search to cubic. Without successful grouping, terminated search is still exponential. These results apply to finding instances of a known object in the data. In this paper, we turn to the problem of selecting models from a library, and examine the combinatorics of determining that a candidate object is not present in the data. We show that the expected search is again exponential, implying that naﶥ approaches to indexing are likely to carry an expensive overhead, since an exponential amount of work is needed to week out each of the incorrect models. The analytic results are shown to be in agreement with empirical data for cluttered object recognition.

Formato

2065629 bytes

1611358 bytes

application/postscript

application/pdf

Identificador

AIM-1226

http://hdl.handle.net/1721.1/6550

Idioma(s)

en_US

Relação

AIM-1226