计算机科学 ›› 2021, Vol. 48 ›› Issue (6A): 603-607.doi: 10.11896/jsjkx.201000035
钱基德1,2, 熊仁和1,2, 王乾垒1,2, 杜冬1,2, 王在俊1,2, 钱基业3
QIAN Ji-de1,2, XIONG Ren-he1,2, WANG Qian-lei1,2, DU Dong1,2, WANG Zai-jun1,2, QIAN Ji-ye3
摘要: 眼是人心理活动和思想在外观上的重要表现形式,文中通过使用高速图像采集系统跟踪飞行员的眼动轨迹来分析其心理行为,以研究飞行员在训练过程中的注意力情况。随着低功耗嵌入式设备、高速5G网络的逐渐成熟,已逐步进入“万物互联”新时代,基于此,提出采用边缘计算设备评估飞行训练效果的解决方案。该方案介绍了一种基于边缘计算架构的实时眼动跟踪系统,采用高速CMOS图像传感器采集眼部图像,提出了一种基于MobileNet的轻量级网络结构快速定位瞳孔位置,然后利用NVIDIA Jetson Nano板卡实现在连续视频图像中定位瞳孔并计算出注视点的功能,以获得眼动视觉焦点轨迹。实验结果表明,该边缘计算系统构成简单,且能满足实时眼动跟踪的要求,为实现实时心理行为分析提供了一种新的有效方法,给改进飞行训练效果提供了重要参考依据。
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