In this paper, we introduce two remote extended reality (XR) research methods that can overcome the limitations of lab-based controlled experiments, especially during the COVID-19 pandemic: (1) a predictive model-based task analysis and (2) a large-scale video-based remote evaluation. We used a box stacking task including three interaction modalities - two multimodal gaze-based interactions as well as a unimodal hand-based interaction which is defined as our baseline. For the first evaluation, a GOMS-based task analysis was performed by analyzing the tasks to understand human behaviors in XR and predict task execution times. For the second evaluation, an online survey was administered using a series of the first-person point of view videos where a user performs the corresponding task with three interaction modalities. A total of 118 participants were asked to compare the interaction modes based on their judgment. Two standard questionnaires were used to measure perceived workload and the usability of the modalities.
翻译:在本文中,我们介绍了两个远程扩大的现实(XR)研究方法,这些方法可以克服实验室控制实验的局限性,特别是在COVID-19大流行期间:(1) 预测模型任务分析,(2) 大规模视频远程评价,我们使用一个盒子堆叠任务,包括三个互动模式——两个基于多式凝视的相互作用,以及作为我们基线的单一方式的手基互动;在第一次评估中,通过分析在XR中了解人类行为的任务和预测任务执行时间,对GOMS的任务进行了分析;在第二次评估中,利用一系列第一人眼视频进行了在线调查,用户用三种互动模式执行相应任务,共有118人被要求根据他们的判断比较互动模式;使用了两个标准问卷,以衡量所认识的工作量和模式的可用性。