Department of Computer Science, Hamburg University of Applied Sciences, Germany.
Stud Health Technol Inform. 2023 Sep 12;307:233-240. doi: 10.3233/SHTI230719.
This paper proposes an eye blink detection system that automatically detects eye blinks, which can be an indicator of fatigue or cognitive load, among others. As a key feature, the real-time capability of the system is being required to use it, for example, as a monitoring system for people in potentially critical situations (e.g., drivers or operators of heavy machinery).
The system uses the Viola-Jones algorithm for face detection and the median flow tracker to track the face in video sequences. Eye detection is implemented using face proportions, and template matching is used for blink detection.
The resulting system processes 40-47 frames per second on default consumer hardware and achieves an accuracy of 80.33% and a precision of 85.22% in the evaluation.
The proposed system shows promising results under ideal viewing conditions but has difficulty maintaining high precision during head movements. The proposed system could be integrated with various health-related assistance systems to monitor the individual's well-being in real time, as long as their head is observed from the front if possible.
本文提出了一种眨眼检测系统,该系统可以自动检测眨眼,眨眼可以作为疲劳或认知负荷等的指标。作为一个关键特性,系统需要具备实时能力,例如,将其用作潜在关键情况下(例如,驾驶员或重型机械操作员)人员的监控系统。
该系统使用 Viola-Jones 算法进行人脸检测,使用中值流跟踪器在视频序列中跟踪人脸。使用面部比例进行眼睛检测,使用模板匹配进行眨眼检测。
在默认的消费类硬件上,生成的系统每秒处理 40-47 帧,在评估中达到 80.33%的准确率和 85.22%的精度。
在理想的观察条件下,提出的系统显示出有希望的结果,但在头部运动时很难保持高精度。只要有可能从正面观察到头部,该系统就可以与各种与健康相关的辅助系统集成,实时监测个体的健康状况。