Fast and Illumination Invariant Face Tracker Algorithm for Complex Video Environments
Keywords:
Face Detector, Face Tracker, Frontal Classifier, Profile Classifier, Complex Video EnviromentAbstract
Video surveillance applications present a problem for the designer of computer vision algorithms. In most cases lighting condition is poor due to the environment and the distance of cameras affect the accuracy of detection. In this paper we develop first an algorithm that detects faces from a video file with a poor illumination, and then an efficient tracker is used to follow the continuity of the faces. Some image pre-processing algorithms are applied like (histogram equalization and manual-dynamic thresholding) to reduce the false faces rate. Hybrid face detector is applied (for both frontal and pose orientation faces) using haar-cascades frontal face and profile face classifiers. The proposed system will be tested on a complex video environment (fast objects in movement) to evaluate the performance in terms of accuracy detection and the efficiency. Test results show that the detection rate accuracy of the faces in the video with the complex environment is very high and reach about 99.05%.
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