Hessels Roy S, Kemner Chantal, van den Boomen Carlijn, Hooge Ignace T C
Department of Experimental Psychology, Helmholtz Institute, Utrecht University, Heidelberglaan 1, 3584CS, Utrecht, The Netherlands.
Department of Developmental Psychology, Utrecht University, Utrecht, The Netherlands.
Behav Res Methods. 2016 Dec;48(4):1694-1712. doi: 10.3758/s13428-015-0676-y.
A problem in eyetracking research is choosing areas of interest (AOIs): Researchers in the same field often use widely varying AOIs for similar stimuli, making cross-study comparisons difficult or even impossible. Subjective choices while choosing AOIs cause differences in AOI shape, size, and location. On the other hand, not many guidelines for constructing AOIs, or comparisons between AOI-production methods, are available. In the present study, we addressed this gap by comparing AOI-production methods in face stimuli, using data collected with infants and adults (with autism spectrum disorder [ASD] and matched controls). Specifically, we report that the attention-attracting and attention-maintaining capacities of AOIs differ between AOI-production methods, and that this matters for statistical comparisons in one of three groups investigated (the ASD group). In addition, we investigated the relation between AOI size and an AOI's attention-attracting and attention-maintaining capacities, as well as the consequences for statistical analyses, and report that adopting large AOIs solves the problem of statistical differences between the AOI methods. Finally, we tested AOI-production methods for their robustness to noise, and report that large AOIs-using the Voronoi tessellation method or the limited-radius Voronoi tessellation method with large radii-are most robust to noise. We conclude that large AOIs are a noise-robust solution in face stimuli and, when implemented using the Voronoi method, are the most objective of the researcher-defined AOIs. Adopting Voronoi AOIs in face-scanning research should allow better between-group and cross-study comparisons.
眼动追踪研究中的一个问题是选择感兴趣区域(AOI):同一领域的研究人员在面对相似刺激时,常常使用差异很大的AOI,这使得跨研究比较变得困难甚至不可能。选择AOI时的主观选择会导致AOI的形状、大小和位置出现差异。另一方面,关于构建AOI的指导原则或AOI生成方法之间的比较并不多。在本研究中,我们通过比较面部刺激中AOI的生成方法来填补这一空白,使用了收集自婴儿和成人(患有自闭症谱系障碍[ASD]及匹配对照组)的数据。具体而言,我们报告称,AOI生成方法之间,AOI的吸引注意力和维持注意力的能力存在差异,并且这对所研究的三组中的一组(ASD组)的统计比较很重要。此外,我们研究了AOI大小与AOI吸引注意力和维持注意力能力之间的关系,以及对统计分析的影响,并报告称采用大AOI可以解决AOI方法之间的统计差异问题。最后,我们测试了AOI生成方法对噪声的鲁棒性,并报告称大AOI(使用Voronoi镶嵌法或大半径的有限半径Voronoi镶嵌法)对噪声最具鲁棒性。我们得出结论,大AOI是面部刺激中对噪声具有鲁棒性的解决方案,并且当使用Voronoi方法实施时,是研究人员定义的AOI中最客观的。在面部扫描研究中采用Voronoi AOI应能实现更好的组间和跨研究比较。