Local-feature Based Vehicle Recognition System Using Parallel Vision Board
Abstract
This paper describes a robust method for recognizing vehicles.
Our system is based on local-feature configuration, and we
have already shown that it works very well in infrared images.
The algorithm is based on our previous work, which is a
generalization of the eigen-window method. This method has
the following three advantages: (1) it can detect even if part of
vehicles is occluded. (2) it can detect even if vehicles are
translated due to running out of the lanes. (3) it does not
require us to segment vehicle areas from input images. It is
true that we have first developed our system with infrared
images, but it is not essential for our system to employ infrared
images. In this paper, applying our system on images of super
wide-angle, we have shown that our system is effective to
optical images, performing two outdoor experiments. Our
system is good at detecting locations of vehicles, hence it will
be useful for not only vehicle detection but also such
application, ETC, DSRC or so, that system needs to know with
which vehicle it communicates.