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Eye tracking algorithms, techniques, tools, and applications with an emphasis on machine learning and Internet of Things technologies

机译:眼跟踪算法,技术,工具和应用重点是机器学习和物联网技术

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摘要

Eye tracking is the process of measuring where one is looking (point of gaze) or the motion of an eye relative to the head. Researchers have developed different algorithms and techniques to automatically track the gaze position and direction, which are helpful in different applications. Research on eye tracking is increasing owing to its ability to facilitate many different tasks, particularly for the elderly or users with special needs. This study aims to explore and review eye tracking concepts, methods, and techniques by further elaborating on efficient and effective modern approaches such as machine learning (ML), Internet of Things (IoT), and cloud computing. These approaches have been in use for more than two decades and are heavily used in the development of recent eye tracking applications. The results of this study indicate that ML and IoT are important aspects in evolving eye tracking applications owing to their ability to learn from existing data, make better decisions, be flexible, and eliminate the need to manually re-calibrate the tracker during the eye tracking process. In addition, they show that eye tracking techniques have more accurate detection results compared with traditional event-detection methods. In addition, various motives and factors in the use of a specific eye tracking technique or application are explored and recommended. Finally, some future directions related to the use of eye tracking in several developed applications are described.
机译:眼睛跟踪是测量一个人正在寻找的过程(凝视点)或眼睛相对于头部的运动。研究人员已经开发出不同的算法和技术,以自动跟踪凝视位置和方向,这有助于不同的应用。由于其促进许多不同任务的能力,眼跟踪的研究正在增加,特别是对于具有特殊需求的老年人或用户来说。本研究旨在通过进一步阐述高效且有效的现代方法,如机器学习(ML),物联网(物联网)和云计算,探索和审查眼睛跟踪概念,方法和技术。这些方法已在二十多年中使用,并且在近期眼跟踪应用的发展中受到大量使用。本研究的结果表明,由于他们从现有数据中学习的能力,ML和IOT是在不断发展的眼跟踪应用方面的重要方面,使得更好的决策,灵活,并消除在眼睛跟踪期间手动重新校准跟踪器的需要过程。此外,它们表明,与传统的事件检测方法相比,眼睛跟踪技术具有更准确的检测结果。此外,探讨了各种动机和因素在使用特定的眼睛跟踪技术或应用程序。最后,描述了与在几种开发的应用中使用眼睛跟踪的一些未来方向。

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