会议专题

Dynamic Features Based Driver Fatigue Detection

Driver fatigue is an important reason for traffic accidents.To account for the temporal aspect of human fatigue,we propose a novel method based on dynamic features to detect fatigue from image sequences.First,global features are extracted from each image and concatenated into dynamic features.Then each feature is coded by the means of training samples,and weak classifiers are constructed on histograms of the coded features.Finally AdaBoost is applied to select the most critical features and establish a strong classifier for fatigue detection.The proposed method is validated under real-life fatigue conditions.The test data includes 600 image sequences with illumination and pose variations from thirty peoples videos.Experiment results show the validity of the proposed method and the average recognition rate is 95.00% which is much better than the baselines.

Computer vision human fatigue PCA AdaBoost

Xiao Fan Baocai Yin Yanfeng Sun

Beijing Key Laboratory of Multimedia and Intelligent Software,College of Computer Science and Technology,Beijing University of Technology,Beijing 100022,China

国际会议

The Third International Conference on Rough Sets and Knowledge Tevhnology(RSKT 2008)(第三届粗糙集与知识技术国际会议)

成都

英文

684-691

2008-05-17(万方平台首次上网日期,不代表论文的发表时间)