研究目的
To develop a remote binocular vision system for pupil diameter estimation that overcomes the limitations of traditional pupillometers, including susceptibility to ambient light, measurement distortion error, and the need for personal calibration.
研究成果
The BINOMAP system demonstrates high accuracy in eye detection, fast tracking speed, and low error in pupil diameter estimation, making it a robust solution for remote, free-head pupil diameter measurement. The use of binocular vision and deep learning overcomes several limitations of traditional pupillometers.
研究不足
The system's performance is evaluated under controlled conditions with specific hardware. The impact of extreme ambient light conditions or very rapid head movements on system accuracy is not fully explored.
1:Experimental Design and Method Selection:
The system is divided into three modules: eye detection (ED), eye tracking (ET), and pupil diameter estimation (PDE). A deep learning network based on YOLO V2 is trained for infrared eye detection. A master-slave structure is proposed for eye tracking to improve speed. A pupil diameter estimation algorithm based on binocular vision is developed to avoid personal calibration and reduce measurement distortion error.
2:Sample Selection and Data Sources:
Data from twenty-six people under different ambient light, distances, and angles are collected. Twenty-one subjects are used for training, and five for testing.
3:List of Experimental Equipment and Materials:
The system includes two cameras with CMOS sensors, a NIR illuminator, and a workstation. The cameras are equipped with NIR filters and lenses with a focal length of 12 mm.
4:Experimental Procedures and Operational Workflow:
The system performs eye detection on the master camera, tracks the eye using DSST algorithm, and matches features on the slave camera. Pupil diameter is estimated using a 3D model based on binocular vision.
5:Data Analysis Methods:
Performance is evaluated based on eye detection accuracy, tracking speed, and pupil diameter estimation error.
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