Concepedia

Publication | Open Access

Face Detection --- Efficient and Rank Deficient

105

Citations

11

References

2004

Year

Abstract

This paper proposes a method for computing fast approximations to sup-port vector decision functions in the field of object detection. In the present approach we are building on an existing algorithm where the set of support vectors is replaced by a smaller, so-called reduced set of syn-thesized input space points. In contrast to the existing method that finds the reduced set via unconstrained optimization, we impose a structural constraint on the synthetic points such that the resulting approximations can be evaluated via separable filters. For applications that require scan-ning large images, this decreases the computational complexity by a sig-nificant amount. Experimental results show that in face detection, rank deficient approximations are 4 to 6 times faster than unconstrained re-duced set systems. 1

References

YearCitations

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