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arxiv 2006.10955 v2 pith:IWOJ5H2R submitted 2020-06-19 cs.CV cs.CYcs.LG

Keep Your AI-es on the Road: Tackling Distracted Driver Detection with Convolutional Neural Networks and Targeted Data Augmentation

classification cs.CV cs.CYcs.LG
keywords augmentationdistracteddriverdrivingtechniquesclassicaldatadetection
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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According to the World Health Organization, distracted driving is one of the leading cause of motor accidents and deaths in the world. In our study, we tackle the problem of distracted driving by aiming to build a robust multi-class classifier to detect and identify different forms of driver inattention using the State Farm Distracted Driving Dataset. We utilize combinations of pretrained image classification models, classical data augmentation, OpenCV based image preprocessing and skin segmentation augmentation approaches. Our best performing model combines several augmentation techniques, including skin segmentation, facial blurring, and classical augmentation techniques. This model achieves an approximately 15% increase in F1 score over the baseline, thus showing the promise in these techniques in enhancing the power of neural networks for the task of distracted driver detection.

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