Title :
Robust vehicle edge detection by cross filter method
Author :
Tang, Katy Po Ki ; Ngan, Henry Y. T.
Author_Institution :
Dept. of Math., Hong Kong Baptist Univ., Kowloon Tong, China
Abstract :
In visual surveillance, vehicle tracking and identification is very popular and applied in many applications such as traffic incident detection, traffic control and management. Edge detection is the key to the success of vehicle tracking and identification. Edge detection is to identify edge locations or geometrical shape changes in term of pixel value along a boundary of two regions in an image. This paper aims to investigate different edge detection methods and introduce a Cross Filter (CF) method, with a two-phase filtering approach, for vehicle images in a given database. First, four classical edge detectors namely the Canny detector, Prewitt detector, Roberts detector and Sobel detector are tested on the vehicle images. The Canny detected image is found to offer the best performance in Phase 1. In Phase 2, the robust CF, based on a spatial relationship of intensity change on edges, is applied on the Canny detected image as a second filtering process. Visual and numerical comparisons among the classical edge detectors and CF detector are also given. The average DSR of the proposed CF method on 10 vehicle images is 95.57%.
Keywords :
edge detection; image colour analysis; image filtering; road vehicles; surveillance; traffic engineering computing; Canny detector; Prewitt detector; Roberts detector; Sobel detector; classical edge detectors; cross filter method; edge locations; filtering process; geometrical shape changes; intensity change; pixel value; robust vehicle edge detection; spatial relationship; traffic control; traffic incident detection; traffic management; two-phase filtering approach; vehicle identification; vehicle images; vehicle tracking; visual surveillance; Abstracts; Decision support systems; Detectors; Image edge detection; Vehicles; Canny detector; Edge detection; Prewitt detector; Roberts detector; Sobel detector; cross filter; vehicle images;
Conference_Titel :
Applied Imagery Pattern Recognition Workshop (AIPR), 2014 IEEE
Conference_Location :
Washington, DC
DOI :
10.1109/AIPR.2014.7041898