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Driver-Distraction-Quantification

We develop a supervised contrastive learning framework to recognize the distracted driving, in which the driver distraction behaviors can be quantified using their distances from normal ones in the latent space. Note that the dataset can be downloaded from the SAM-DD website.

illustration

  • Visual examples

          normal driving                       making hair

            phoning                           texting