TU Berlin, Berlin, Germany.
Nicolaus Copernicus University, Torun, Poland.
Behav Res Methods. 2021 Oct;53(5):2049-2068. doi: 10.3758/s13428-020-01513-1. Epub 2021 Mar 22.
We present an algorithmic method for aligning recall fixations with encoding fixations, to be used in looking-at-nothing paradigms that either record recall eye movements during silence or want to speed up data analysis with recordings of recall data during speech. The algorithm utilizes a novel consensus-based elastic matching algorithm to estimate which encoding fixations correspond to later recall fixations. This is not a scanpath comparison method, as fixation sequence order is ignored and only position configurations are used. The algorithm has three internal parameters and is reasonable stable over a wide range of parameter values. We then evaluate the performance of our algorithm by investigating whether the recalled objects identified by the algorithm correspond with independent assessments of what objects in the image are marked as subjectively important. Our results show that the mapped recall fixations align well with important regions of the images. This result is exemplified in four groups of use cases: to investigate the roles of low-level visual features, faces, signs and text, and people of different sizes, in recall of encoded scenes. The plots from these examples corroborate the finding that the algorithm aligns recall fixations with the most likely important regions in the images. Examples also illustrate how the algorithm can differentiate between image objects that have been fixated during silent recall vs those objects that have not been visually attended, even though they were fixated during encoding.
我们提出了一种将回忆注视与编码注视对齐的算法方法,可用于在记录无声时回忆眼动或在记录说话时的回忆数据以加快数据分析速度的无注视范式中使用。该算法利用一种新颖的基于共识的弹性匹配算法来估计哪些编码注视对应于稍后的回忆注视。这不是一种扫视路径比较方法,因为忽略了注视序列顺序,只使用位置配置。该算法有三个内部参数,在广泛的参数值范围内性能合理稳定。然后,我们通过调查算法识别的回忆对象是否与对图像中哪些对象被主观标记为重要的独立评估相对应,来评估我们算法的性能。我们的结果表明,映射的回忆注视与图像的重要区域很好地对齐。这一结果在四个用例组中得到了例证:研究低水平视觉特征、面孔、标志和文本以及不同大小的人在编码场景回忆中的作用。这些示例的图证实了该算法将回忆注视与图像中最有可能的重要区域对齐的发现。示例还说明了该算法如何区分在无声回忆期间已注视的图像对象与那些在编码期间未被视觉注意的对象,即使它们在编码期间已被注视。