Samenvatting
Robust vehicle detection is a challenging task given vehicles
with different types, and sizes, and at different distances.
This paper proposes a Boosted Gabor Features
(BGF) approach for vehicle detection. The two main conventional
Gabor filter design approaches are a filter bank
design approach with fixed parameters even for different
applications and a learning approach. In contrast, the parameters
of our boosted Gabor filters, learned from examples,
differ from application to application. Moreover, our
boosted approach optimizes the filter parameters for every
image sub-window, and the boosted filters have a large response
for sub-windows containing a part of a vehicle resulting
in a greatly improved performance in vehicle detection.
Our vehicle detection has two basic phases in which we
build a multi-resolution hypothesis-validation structure. In
the vehicle hypothesis generation phase, hypothesis lists
are generated for three ROIs with different resolutions using
horizontal and vertical edges ,and following that, a hypothesis
list for the whole image is obtained by combining
these three lists. In the subsequent hypothesis validation
phase, we validate the vehicle hypothesis list by inputting
the boosted Gabor feature vector into the support vector
machine.
In the context of vehicle detection, the resulting system
yields detection rates comparable to the best previous systems
while achieving a 20 frames per second real-time performance
on a Pentium(R)4 CPU 2.4GHz.
Originele taal-2 | Engels |
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Titel | 18th International Conference on Pattern Recognition (ICPR 2006, Hong Kong, August 20-24, 2006) |
Redacteuren | Y.Y. Tang, S.P. Wang, G. Lorette |
Plaats van productie | Los Alamitos |
Uitgeverij | IEEE Computer Society |
Pagina's | 662-666 |
ISBN van geprinte versie | 0-7695-2521-0 |
DOI's | |
Status | Gepubliceerd - 2006 |