CVJul 30, 2024

Spiking-DD: Neuromorphic Event Camera based Driver Distraction Detection with Spiking Neural Network

arXiv:2407.20633v26 citationsh-index: 10
Originality Incremental advance
AI Analysis

This addresses road safety by improving driver monitoring systems, though it is incremental as it combines existing technologies in a novel application.

The paper tackled driver distraction detection by using event cameras and spiking neural networks, achieving state-of-the-art performance with fewer parameters and greater accuracy than existing event-based methods.

Event camera-based driver monitoring is emerging as a pivotal area of research, driven by its significant advantages such as rapid response, low latency, power efficiency, enhanced privacy, and prevention of undersampling. Effective detection of driver distraction is crucial in driver monitoring systems to enhance road safety and reduce accident rates. The integration of an optimized sensor such as Event Camera with an optimized network is essential for maximizing these benefits. This paper introduces the innovative concept of sensing without seeing to detect driver distraction, leveraging computationally efficient spiking neural networks (SNN). To the best of our knowledge, this study is the first to utilize event camera data with spiking neural networks for driver distraction. The proposed Spiking-DD network not only achieve state of the art performance but also exhibit fewer parameters and provides greater accuracy than current event-based methodologies.

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