Driver Distraction Detection Using Semi-Supervised Machine Learning PROJECT TITLE :Driver Distraction Detection Using Semi-Supervised Machine LearningABSTRACT:Real-time driver distraction detection is that the core to many distraction countermeasures and fundamental for constructing a driver-focused driver help system. Whereas information-driven ways demonstrate promising detection performance, a specific challenge is how to cut back the considerable value for collecting labeled data. This paper explored semi-supervised ways for driver distraction detection in real driving conditions to alleviate the value of labeling training data. Laplacian support vector machine and semi-supervised extreme learning machine were evaluated using eye and head movements to classify 2 driver states: attentive and cognitively distracted. With the additional unlabeled information, the semi-supervised learning ways improved the detection performance (G-mean) by zero.0245, on average, over all subjects, as compared with the traditional supervised methods. As unlabeled coaching data can be collected from drivers' naturalistic driving records with little further resource, semi-supervised methods, which utilize both labeled and unlabeled knowledge, will enhance the efficiency of model development in terms of your time and cost. Did you like this research project? To get this research project Guidelines, Training and Code... Click Here facebook twitter google+ linkedin stumble pinterest ArRESTed Development: Guidelines for Designing REST Frameworks