What Can Be Predicted from Six Seconds of Driver Glances?

26 Nov 2016Lex FridmanHeishiro ToyodaSean SeamanBobbie SeppeltLinda AngellJoonbum LeeBruce MehlerBryan Reimer

We consider a large dataset of real-world, on-road driving from a 100-car naturalistic study to explore the predictive power of driver glances and, specifically, to answer the following question: what can be predicted about the state of the driver and the state of the driving environment from a 6-second sequence of macro-glances? The context-based nature of such glances allows for application of supervised learning to the problem of vision-based gaze estimation, making it robust, accurate, and reliable in messy, real-world conditions... (read more)

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