Design & analysis of K-means algorithm for cognitive fatigue detection in vehicular driver using Respiration signal

Vehicular drivers and shift workers in industry are at most risk of handling life critical tasks. The drivers traveling long distances or when they are tired, are at risk of a meeting an accident. The early hours of the morning and the middle of the afternoon are the peak times for fatigue driven accidents. The difficulty in determining the incidence of fatigue-related accidents is due, at least in part, to the difficulty in identifying fatigue as a causal or causative factor in accidents. In this paper we propose an alternative approach for fatigue detection in vehicular drivers using Respiration (RSP) signal to reduce the losses of the lives and vehicular accidents those occur due to cognitive fatigue of the driver. We are using basic K-means algorithm with proposed two modifications as classifier for detection of Respiration signal two state fatigue data recorded from the driver. The K-means classifiers [11] were trained and tested for wavelet feature of Respiration signal. The extracted features were treated as individual decision making parameters. From test results it could be found that some of the wavelet features could fetch 100 % classification accuracy.

[1]  Mervyn V. M. Yeo,et al.  Can SVM be used for automatic EEG detection of drowsiness during car driving , 2009 .

[2]  M. P. Padma,et al.  A modified algorithm for clustering based on particle swarm optimization and K-means , 2012, 2012 International Conference on Computer Communication and Informatics.

[3]  Shuyan Hu,et al.  Driver drowsiness detection with eyelid related parameters by Support Vector Machine , 2009, Expert Syst. Appl..

[4]  Anna Vadeby,et al.  The alerting effect of hitting a rumble strip--a simulator study with sleepy drivers. , 2008, Accident; analysis and prevention.

[5]  Rahul Banerjee,et al.  An SVM Classifier for Fatigue-Detection Using Skin Conductance for Use in the BITS-Lifeguard Wearable Computing System , 2009, 2009 Second International Conference on Emerging Trends in Engineering & Technology.

[6]  Yonghui Zhang,et al.  Fatigue Detection Based on Regional Local Binary Patterns Histogram and Support Vector Machine , 2012, 2012 International Conference on Computer Science and Electronics Engineering.

[7]  Rahul Banerjee,et al.  Detection of fatigue of vehicular driver using skin conductance and oximetry pulse: a neural network approach , 2009, iiWAS.

[8]  M. Chung,et al.  Electroencephalographic study of drowsiness in simulated driving with sleep deprivation , 2005 .

[9]  Quan Shi,et al.  Analysis and Research of the Campus Network User's Behavior Based on k-Means Clustering Algorithm , 2013, 2013 Fourth International Conference on Digital Manufacturing & Automation.

[10]  Tingting Cui,et al.  Weight Computing in Competitive K-Means Algorithm , 2012, 2012 Computing, Communications and Applications Conference.

[11]  Chong Zhang,et al.  Automatic recognition of cognitive fatigue from physiological indices by using wavelet packet transform and kernel learning algorithms , 2009, Expert Syst. Appl..