Grating haptic perception through touchscreen: Sighted vs. Visually Impaired
November 13, 2025 Β· Declared Dead Β· π arXiv.org
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Authors
Yichen Gao, Menghan Hu, Gang Luo
arXiv ID
2511.10026
Category
cs.HC: Human-Computer Interaction
Citations
1
Venue
arXiv.org
Last Checked
4 months ago
Abstract
Providing haptic feedback via smartphone touch screen may potentially offer blind people a capability to understand graphs. This study investigated the discrimination performance of haptic gratings in different frequencies, in both visually impaired (VI) and sighted (S) individuals. 6 VI participants and 10 S participants took part in two experiments designed to compare their ability to interpret grating images with a finger swiping across a smartphone touchscreen without vision. The swipe gesture activates phone vibration temporally synchronized with the black stripes. Their tasks were: (1) determining whether a grating pattern is presented on the touchscreen, (2) comparing two different grating frequencies and determining the wider one. Results demonstrated that the VI group exhibited superior tactile sensitivity compared to the S group, as evidenced by their significantly better performance in Experiment 1 (accuracy of 99.15\% vs. 84.5\%). Experiment 2 revealed that the peak performance of VI participants was approximately around 0.270 cycles per mm (83.3\% accuracy), a frequency very similar to Braille dot spacing, while S group peaked around 0.963 cycles per mm (70\% accuracy). The findings suggest that tactile stimulation coded with grating patterns could be potentially used to present interpretable graph for the visually impaired. Such an approach could offer a value to research in human-computer interaction and sensory adaptation.
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