Adaptive HSV Color Background Modeling for Real-time Vehicle Tracking with Shadow Detection in Traffic Surveillance[J]. Journal of Image and Graphics, 2003, 8(7): 778. DOI: 10.11834/jig.200307274.
Adaptive HSV Color Background Modeling for Real-time Vehicle Tracking with Shadow Detection in Traffic Surveillance
Real time segmentation of moving objects in image sequence is a crucial step in traffic surveillance which include many different sub modules such as vehicle detection
vehicle statistic
real time tracking
speed measurement
etc. A typical method is background subtraction. Many background models have been introduced to deal with different problems at present. In the paper
we propose an adaptive HSV color background model with shadow detection to segment moving objects. We propose to operate in the Hue Saturation Value (HSV) color space
instead of the traditional RGB space
and show that it provides a better use of the color information
and naturally incorporates gray level only processing. At each instant
the system constructs three Gauss distribution for a pixel and maintains an updated background model
and a list of occluding regions that can then be tracked. However
problems arise due to shadows. In particular
moving shadows can affect the correct localization
measurements and detection of moving objects. This work aims to present a technique for shadow detection and suppression used in adaptive color background model. The major novelty of the shadow detection technique is the analysis carried out in the HSV color space to improve the accuracy in detecting shadows. The details of the algorithm are outlined and the experimental results are shown and evaluated. The results show that this algorithm combines the advantages of veracity and of runtime