在野外使用的智能手机前置摄像头中理解面部和眼睛的可见性

M. Khamis, Anita Baier, N. Henze, Florian Alt, A. Bulling
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引用次数: 31

摘要

商品移动设备现在配备了高分辨率前置摄像头,允许应用于生物识别(例如iPhone X中的FaceID),面部表情分析或凝视交互。然而,目前尚不清楚用户多久会以一种允许捕捉面部或眼睛的方式持有设备,以及这会如何影响检测准确性。我们收集了25,726张野外照片,这些照片来自智能手机的前置摄像头以及相关的应用程序使用日志。我们发现,大约29%的情况下,整张脸是可见的,而在大多数情况下,脸只是部分可见。此外,我们确定了用户当前活动的影响;例如,在观看视频时,在我们的数据集中,75%的时间眼睛是可见的,而不是整个脸。我们发现,最先进的人脸检测算法对前置摄像头拍摄的照片表现不佳。我们讨论了这些发现如何影响利用面部和眼睛检测的移动应用程序,并得出了解决当前技术局限性的实际意义。
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Understanding Face and Eye Visibility in Front-Facing Cameras of Smartphones used in the Wild
Commodity mobile devices are now equipped with high-resolution front-facing cameras, allowing applications in biometrics (e.g., FaceID in the iPhone X), facial expression analysis, or gaze interaction. However, it is unknown how often users hold devices in a way that allows capturing their face or eyes, and how this impacts detection accuracy. We collected 25,726 in-the-wild photos, taken from the front-facing camera of smartphones as well as associated application usage logs. We found that the full face is visible about 29% of the time, and that in most cases the face is only partially visible. Furthermore, we identified an influence of users' current activity; for example, when watching videos, the eyes but not the entire face are visible 75% of the time in our dataset. We found that a state-of-the-art face detection algorithm performs poorly against photos taken from front-facing cameras. We discuss how these findings impact mobile applications that leverage face and eye detection, and derive practical implications to address state-of-the art's limitations.
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