2024
DOI: 10.1109/access.2024.3371487
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Optimization of Event Camera Bias Settings for a Neuromorphic Driver Monitoring System

Mehdi Sefidgar Dilmaghani,
Waseem Shariff,
Muhammad Ali Farooq
et al.

Abstract: Event cameras provide a novel imaging technology for high-speed analysis of localized facial motions such as eye gaze, eye-blink and micro-expressions by taking input at the level of an individual pixel. Due to this capability, and lightweight amount of the output data these cameras are being evaluated as a viable option for driver monitoring systems (DMS). This research investigates the impact of pixelbias alteration on DMS features, which are: face tracking, blink counting, head pose and gaze estimation. In … Show more

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Cited by 2 publications
(1 citation statement)
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References 34 publications
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“…Such algorithms are critical for applications requiring highspeed visual processing, emphasizing the unique advantages of event-based sensors. Moreover, authors in [228] analysed a bias modification on the event-based DMS output and propose an approach for evaluating and comparing DMS performance. Further the approach also discusses the adaptability of event cameras to different environments.…”
Section: Motion Segmentationmentioning
confidence: 99%
“…Such algorithms are critical for applications requiring highspeed visual processing, emphasizing the unique advantages of event-based sensors. Moreover, authors in [228] analysed a bias modification on the event-based DMS output and propose an approach for evaluating and comparing DMS performance. Further the approach also discusses the adaptability of event cameras to different environments.…”
Section: Motion Segmentationmentioning
confidence: 99%