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Jamie Ullerich, Maximiliane Windl, Andreas Bulling, Sven Mayer
ThumbPitch: Enriching Thumb Interaction on Mobile Touchscreens using Deep Learning Proceedings of the 34th Australian Conference on Human-Computer Interaction Proceedings (OzCHI'22), Association for Computing Machinery, 2022-11-29 (bib) |
Today touchscreens are one of the most common input devices for everyday ubiquitous interaction. Yet, capacitive touchscreens are limited in expressiveness; thus, a large body of work has focused on extending the input capabilities of touchscreens. One promising approach is to use index finger orientation; however, this requires a two-handed interaction and poses ergonomic constraints. We propose using the thumb's pitch as an additional input dimension to counteract these limitations, enabling one-handed interaction scenarios. Our deep convolutional neural network detecting the thumb's pitch is trained on more than 230,000 ground truth images recorded using a motion tracking system. We highlight the potential of ThumbPitch by proposing several use cases that exploit the higher expressiveness, especially for one-handed scenarios. We tested three use cases in a validation study and validated our model. Our model achieved a mean error of only 11.9deg. |