Javadi Amir-Homayoun, Hakimi Zahra, Barati Morteza, Walsh Vincent, Tcheang Lili
Department of Experimental Psychology, Institute of Behavioural Neuroscience University College London London, UK.
Young Researchers and Elite Club, Qazvin Branch, Islamic Azad University Qazvin, Iran.
Front Neuroeng. 2015 Apr 9;8:4. doi: 10.3389/fneng.2015.00004. eCollection 2015.
Mobile eye-tracking in external environments remains challenging, despite recent advances in eye-tracking software and hardware engineering. Many current methods fail to deal with the vast range of outdoor lighting conditions and the speed at which these can change. This confines experiments to artificial environments where conditions must be tightly controlled. Additionally, the emergence of low-cost eye tracking devices calls for the development of analysis tools that enable non-technical researchers to process the output of their images. We have developed a fast and accurate method (known as "SET") that is suitable even for natural environments with uncontrolled, dynamic and even extreme lighting conditions. We compared the performance of SET with that of two open-source alternatives by processing two collections of eye images: images of natural outdoor scenes with extreme lighting variations ("Natural"); and images of less challenging indoor scenes ("CASIA-Iris-Thousand"). We show that SET excelled in outdoor conditions and was faster, without significant loss of accuracy, indoors. SET offers a low cost eye-tracking solution, delivering high performance even in challenging outdoor environments. It is offered through an open-source MATLAB toolkit as well as a dynamic-link library ("DLL"), which can be imported into many programming languages including C# and Visual Basic in Windows OS (www.eyegoeyetracker.co.uk).
尽管眼动追踪软件和硬件工程最近取得了进展,但在外部环境中进行移动眼动追踪仍然具有挑战性。许多当前的方法无法应对广泛的户外光照条件以及这些条件变化的速度。这将实验限制在必须严格控制条件的人工环境中。此外,低成本眼动追踪设备的出现要求开发分析工具,使非技术研究人员能够处理他们图像的输出。我们开发了一种快速准确的方法(称为“SET”),即使在光照条件不受控制、动态甚至极端的自然环境中也适用。我们通过处理两组眼图像,将SET的性能与两种开源替代方法的性能进行了比较:具有极端光照变化的自然户外场景图像(“自然”);以及挑战性较小的室内场景图像(“CASIA-Iris-Thousand”)。我们表明,SET在户外条件下表现出色,在室内也更快,且精度没有显著损失。SET提供了一种低成本的眼动追踪解决方案,即使在具有挑战性的户外环境中也能提供高性能。它通过一个开源的MATLAB工具包以及一个动态链接库(“DLL”)提供,该库可以导入到许多编程语言中,包括Windows操作系统中的C#和Visual Basic(www.eyegoeyetracker.co.uk)。