Real-time monitoring of driver drowsiness on mobile platforms using 3D neural networks
Jasper S. Wijnands, Jason Thompson, Kerry A. Nice, Gideon D. P. A., Aschwanden, Mark Stevenson

TL;DR
This paper presents a real-time driver drowsiness detection method on mobile devices using efficient 3D neural networks, enabling cost-effective and practical safety applications without specialized hardware.
Contribution
It introduces a novel approach combining depthwise separable 3D convolutions with early fusion for improved accuracy and real-time inference on smartphones.
Findings
Achieves high accuracy with real-time inference on mobile devices.
Effective detection even when sunglasses conceal eyes.
Demonstrates practical application with a custom smartphone app.
Abstract
Driver drowsiness increases crash risk, leading to substantial road trauma each year. Drowsiness detection methods have received considerable attention, but few studies have investigated the implementation of a detection approach on a mobile phone. Phone applications reduce the need for specialised hardware and hence, enable a cost-effective roll-out of the technology across the driving population. While it has been shown that three-dimensional (3D) operations are more suitable for spatiotemporal feature learning, current methods for drowsiness detection commonly use frame-based, multi-step approaches. However, computationally expensive techniques that achieve superior results on action recognition benchmarks (e.g. 3D convolutions, optical flow extraction) create bottlenecks for real-time, safety-critical applications on mobile devices. Here, we show how depthwise separable 3D…
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