Browsing by Author "Khurram Shahbaz"
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Item Visual Distraction Detection for Safety Driving(University of Management and Technolog, 2016) Khurram Shahbaz; Badar Nasir; Zahid, Hassam; Usman, MuhammadEvery day we see and hear about road accidents caused by irresponsible behavior of the drivers. The majority of the misfortunes happen because of the eye off the road while driving, not concentrating on the road signs and also of driver's distraction from the road. This project is here to discuss and highlight the driver's facial motion distraction and gives methods which use facial points and head rotation of the driver to indicate the problem. These facial points are detected by ASM and Boosted Regression with Markov Networks (BoRMaN). Classifiers like (Neural Networks (Multilayer Perceptron (MLP)), Naïve Byes, J48, Decision Table, NNGE, SMO (Support Vector Machine (SVM)) and Adaboost were used to prepare and test the features of various framesItem Visual distraction detection for safety driving(University of Management and Technology Lahore, 2016) Khurram Shahbaz; Badar Nasir; Hassam Zahid; Muhammad UsmanEvery day we see and hear about road accidents caused by irresponsible behavior of the drivers. The majority of the misfortunes happen because of the eye off the road while driving, not concentrating on the road signs and also of driver's distraction from the road. This project is here to discuss and highlight the driver's facial motion distraction and gives methods which use facial points and head rotation of the driver to indicate the problem. These facial points are detected by ASM and Boosted Regression with Markov Networks (BoRMaN). Classifiers like (Neural Networks (Multilayer Perceptron (MLP)), Naïve Byes, J48, Decision Table, NNGE, SMO (Support Vector Machine (SVM)) and Adaboost were used to prepare and test the features of various frames.Item Visual distraction detection for safety driving(umt lahore, 2017) Khurram Shahbaz; Badar Nasir; Hassam Zahid; Muhammad UsmanEvery day we see and hear about road accidents caused by irresponsible behavior of the drivers. The majority of the misfortunes happen because of the eye off the road while driving, not concentrating on the road signs and also of driver's distraction from the road. This project is here to discuss and highlight the driver’s facial motion distraction and gives methods which use facial points and head rotation of the driver to indicate the problem. These facial points are detected by ASM and Boosted Regression with Markov Networks (BoRMaN). Classifiers like (Neural Networks (Multilayer Perceptron (MLP)), Naïve Byes, J48, Decision Table, NNGE, SMO (Support Vector Machine (SVM)) and Adaboost were used to prepare and test the features of various frames.