Less Cybersickness, Please: Demystifying and Detecting Stereoscopic Visual Inconsistencies in Virtual Reality Apps
Shuqing Li, Cuiyun Gao, Jianping Zhang, Yujia Zhang, Yepang Liu,, Jiazhen Gu, Yun Peng, and Michael R. Lyu

TL;DR
This paper introduces StereoID, an unsupervised framework that detects stereoscopic visual inconsistencies in VR apps by analyzing GUI states and synthetic images, addressing challenges like data scarcity and diverse manifestations.
Contribution
The paper presents StereoID, a novel unsupervised black-box testing method for detecting SVI issues in VR, leveraging synthetic image generation and a large-scale dataset.
Findings
StereoID outperforms existing methods in detecting SVI issues.
The framework effectively identifies diverse SVI manifestations.
Large dataset enhances detection accuracy and robustness.
Abstract
The quality of Virtual Reality (VR) apps is vital, particularly the rendering quality of the VR Graphical User Interface (GUI). Different from traditional 2D apps, VR apps create a 3D digital scene for users, by rendering two distinct 2D images for the user's left and right eyes, respectively. Stereoscopic visual inconsistency (denoted as "SVI") issues, however, undermine the rendering process of the user's brain, leading to user discomfort and even adverse health effects. Such issues commonly exist but remain underexplored. We conduct an empirical analysis on 282 SVI bug reports from 15 VR platforms, summarizing 15 types of manifestations. The empirical analysis reveals that automatically detecting SVI issues is challenging, mainly because: (1) lack of training data; (2) the manifestations of SVI issues are diverse, complicated, and often application-specific; (3) most accessible VR…
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