Detection of Street-Parking Vehicles from Panoramic Street Image
Abstract
It is important to assess street-parking vehicles causing traffic problems in urban areas,
however, it is performed manually and at high cost. It is a top priority for reducing
cost, to develop a detection system of those vehicles. We address a spatio-temporal
volume and two types of slice surfaces from the volume, and introduce two-types of
panoramic street-images, which possibly provide useful information for our daily life.
We propose two alternative detection methods, using a laser-range finder and a line-scan
camera. In the former detection method, EPI analysis is applied to line-scan images.
As a result of verification experiments in real roads, a detection rate reached 76.9 %.
In the latter detection method, two kinds of cluster analysis are applied to range points:
One is for clustering points at each scan, and the other for clustering points over
several scans. Each cluster of range points means a vehicle. As a result of verification
experiments in real roads, a detection rate reached 90 %.