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On the Issues of TrueDepth Sensor Data for Computer Vision Tasks Across Different iPad Generations

2022-01-26 10:53:54
Steffen Urban, Thomas Lindemeier, David Dobbelstein, Matthias Haenel

Abstract

In 2017 Apple introduced the TrueDepth sensor with the iPhone X release. Although its primary use case is biometric face recognition, the exploitation of accurate depth data for other computer vision tasks like segmentation, portrait image generation and metric 3D reconstruction seems natural and lead to the development of various applications. In this report, we investigate the reliability of TrueDepth data - accessed through two different APIs - on various devices including different iPhone and iPad generations and reveal two different and significant issues on all tested iPads.

Abstract (translated)

URL

https://arxiv.org/abs/2201.10865

PDF

https://arxiv.org/pdf/2201.10865.pdf


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