DriveGazen: Event-Based Driving Status Recognition using Conventional Camera
Xiaoyin Yang

TL;DR
DriveGazen introduces a real-time, eye-based driving status recognition system using conventional cameras, novel event frame generation, and a guide attention spiking neural network, achieving robust performance across lighting conditions.
Contribution
It is the first to combine guide attention spiking neural networks with eye-based event frames from conventional cameras for driving status recognition.
Findings
Effective recognition of driving status from eye observations.
Superior performance demonstrated on DriveGaze and SEE datasets.
Robustness to lighting variations achieved.
Abstract
We introduce a wearable driving status recognition device and our open-source dataset, along with a new real-time method robust to changes in lighting conditions for identifying driving status from eye observations of drivers. The core of our method is generating event frames from conventional intensity frames, and the other is a newly designed Attention Driving State Network (ADSN). Compared to event cameras, conventional cameras offer complete information and lower hardware costs, enabling captured frames to encode rich spatial information. However, these textures lack temporal information, posing challenges in effectively identifying driving status. DriveGazen addresses this issue from three perspectives. First, we utilize video frames to generate realistic synthetic dynamic vision sensor (DVS) events. Second, we adopt a spiking neural network to decode pertinent temporal…
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Taxonomy
TopicsVideo Surveillance and Tracking Methods · Autonomous Vehicle Technology and Safety · Automated Road and Building Extraction
MethodsSoftmax · Attention Is All You Need · ADaptive gradient method with the OPTimal convergence rate
