Xiong Jianbin, Dai Weikun, Wang Qi, Dong Xiangjun, Ye Baoyu, Yang Jianxiang
School of Automation, Guangdong Polytechnic Normal University, Guangzhou, Guangdong, China.
School of Aircraft Maintenance Engineering, Guangzhou Civil Aviation College, Guangzhou, Guangdong, China.
PeerJ Comput Sci. 2025 Jan 14;11:e2594. doi: 10.7717/peerj-cs.2594. eCollection 2025.
Blink detection is a highly concerned research direction in the field of computer vision, which plays a key role in various application scenes such as human-computer interaction, fatigue detection and emotion perception. In recent years, with the rapid development of deep learning, the application of deep learning techniques for precise blink detection has emerged as a significant area of interest among researchers. Compared with traditional methods, the blink detection method based on deep learning offers superior feature learning ability and higher detection accuracy. However, the current research on blink detection based on deep learning lacks systematic summarization and comparison. Therefore, the aim of this article is to comprehensively review the research progress in deep learning-based blink detection methods and help researchers to have a clear understanding of the various approaches in this field. This article analyzes the progress made by several classical deep learning models in practical applications of eye blink detection while highlighting their respective strengths and weaknesses. Furthermore, it provides a comprehensive summary of commonly used datasets and evaluation metrics for blink detection. Finally, it discusses the challenges and future directions of deep learning for blink detection applications. Our analysis reveals that deep learning-based blink detection methods demonstrate strong performance in detection. However, they encounter several challenges, including training data imbalance, complex environment interference, real-time processing issues and application device limitations. By overcoming the challenges identified in this study, the application prospects of deep learning-based blink detection algorithms will be significantly enhanced.
眨眼检测是计算机视觉领域备受关注的研究方向,在人机交互、疲劳检测和情感感知等各种应用场景中发挥着关键作用。近年来,随着深度学习的快速发展,基于深度学习技术的精确眨眼检测应用已成为研究人员关注的重要领域。与传统方法相比,基于深度学习的眨眼检测方法具有更强的特征学习能力和更高的检测准确率。然而,目前基于深度学习的眨眼检测研究缺乏系统的总结和比较。因此,本文旨在全面综述基于深度学习的眨眼检测方法的研究进展,帮助研究人员清晰了解该领域的各种方法。本文分析了几种经典深度学习模型在眨眼检测实际应用中取得的进展,同时突出了它们各自的优缺点。此外,还对眨眼检测常用的数据集和评估指标进行了全面总结。最后,讨论了深度学习在眨眼检测应用中的挑战和未来发展方向。我们的分析表明,基于深度学习的眨眼检测方法在检测方面表现出强大的性能。然而,它们面临着一些挑战,包括训练数据不平衡、复杂环境干扰、实时处理问题和应用设备限制。通过克服本研究中确定的挑战,基于深度学习的眨眼检测算法的应用前景将得到显著提升。