Towards a Practical Pedestrian Distraction Detection Framework using Wearables
Nisha Vinayaga-Sureshkanth, Anindya Maiti, Murtuza Jadliwala, Kirsten, Crager, Jibo He, Heena Rathore

TL;DR
This paper presents a new efficient pedestrian distraction detection framework using wearable device sensors, balancing accuracy and resource constraints, and validates it through extensive experiments and comparisons.
Contribution
It introduces a novel lightweight activity recognition framework utilizing frequency matching for pedestrian distraction detection on mobile and wearable devices.
Findings
Achieves high detection accuracy with low resource consumption.
Outperforms existing complex activity recognition techniques.
Validated through real-world data and prototype implementations.
Abstract
Pedestrian safety continues to be a significant concern in urban communities and pedestrian distraction is emerging as one of the main causes of grave and fatal accidents involving pedestrians. The advent of sophisticated mobile and wearable devices, equipped with high-precision on-board sensors capable of measuring fine-grained user movements and context, provides a tremendous opportunity for designing effective pedestrian safety systems and applications. Accurate and efficient recognition of pedestrian distractions in real-time given the memory, computation and communication limitations of these devices, however, remains the key technical challenge in the design of such systems. Earlier research efforts in pedestrian distraction detection using data available from mobile and wearable devices have primarily focused only on achieving high detection accuracy, resulting in designs that…
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