2022
DOI: 10.1145/3517243
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Estimating 3D Finger Angle via Fingerprint Image

Abstract: Touchscreens are the primary input devices for smartphones and tablets. Although widely used, the output of touchscreen controllers is still limited to the two-dimensional position of the contacting finger. Finger angle (or orientation) estimation from touchscreen images has been studied for enriching touch input. However, only pitch and yaw are usually estimated and estimation error is large. One main reason is that touchscreens provide very limited information of finger. With the development of under-screen … Show more

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Cited by 8 publications
(4 citation statements)
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“…More recent research has explored the feasibility of estimating fingertip pose from fingerprints. A research team from Tsinghua University developed two 3D angle estimation methods based on deep neural networks [11] and fingerprint matching [27], respectively, and have achieved SOTA performance. These works successfully accurately estimated fingertip 3D angles, where the rolling angles were quantitatively measured for the first time.…”
Section: A Touchscreen For Fingertipmentioning
confidence: 99%
See 3 more Smart Citations
“…More recent research has explored the feasibility of estimating fingertip pose from fingerprints. A research team from Tsinghua University developed two 3D angle estimation methods based on deep neural networks [11] and fingerprint matching [27], respectively, and have achieved SOTA performance. These works successfully accurately estimated fingertip 3D angles, where the rolling angles were quantitatively measured for the first time.…”
Section: A Touchscreen For Fingertipmentioning
confidence: 99%
“…These works successfully accurately estimated fingertip 3D angles, where the rolling angles were quantitatively measured for the first time. However, such methods rely on large data collection to train models with generalization, otherwise they cannot cover all possible combinations of 3D angles [11]. Even if non-learning frameworks are used, a pre-registration library needs to be constructed for fingerprint matching [27].…”
Section: A Touchscreen For Fingertipmentioning
confidence: 99%
See 2 more Smart Citations