Eye contact between individuals is particularly important for understanding human behaviour. To further investigate the importance of eye contact in social interactions, portable eye tracking technology seems to be a natural choice. However, the analysis of available data can become quite complex. Scientists need data that is calculated quickly and accurately. Additionally, the relevant data must be automatically separated to save time. In this work, we propose a tool called MutualEyeContact which excels in those tasks and can help scientists to understand the importance of (mutual) eye contact in social interactions. We combine state-of-the-art eye tracking with face recognition based on machine learning and provide a tool for analysis and visualization of social interaction sessions. This work is a joint collaboration of computer scientists and cognitive scientists. It combines the fields of social and behavioural science with computer vision and deep learning.
翻译:个人之间的眼接触对于理解人类行为特别重要。为了进一步调查眼接触在社会互动中的重要性,便携式眼睛跟踪技术似乎是一种自然选择。然而,对现有数据的分析可能变得相当复杂。科学家需要快速和准确计算的数据。此外,相关数据必须自动分离,以节省时间。在这项工作中,我们提出了一个名为“双眼接触”的工具,它优于这些任务,能够帮助科学家理解(双)眼接触在社会互动中的重要性。我们把最新的眼睛跟踪与基于机器学习的面部识别结合起来,并为分析和直观社会互动会议提供了工具。这项工作是计算机科学家和认知科学家的联合协作。它把社会和行为科学领域与计算机愿景和深层次学习结合起来。