BiFingerPose: Bimodal Finger Pose Estimation for Touch Devices
Xiongjun Guan, Zhiyu Pan, Jianjiang Feng, Jie Zhou

TL;DR
BiFingerPose introduces a bimodal finger pose estimation method combining capacitive images and fingerprint patches, significantly improving accuracy and efficiency for touch device interactions.
Contribution
The paper presents a novel bimodal approach for finger pose estimation that accurately predicts comprehensive finger poses, including roll angle, surpassing existing single-modality methods.
Findings
Over 21% improvement in prediction performance
2.5 times higher task completion efficiency
23% better user operation accuracy
Abstract
Finger pose offers promising opportunities to expand human computer interaction capability of touchscreen devices. Existing finger pose estimation algorithms that can be implemented in portable devices predominantly rely on capacitive images, which are currently limited to estimating pitch and yaw angles and exhibit reduced accuracy when processing large-angle inputs (especially when it is greater than 45 degrees). In this paper, we propose BiFingerPose, a novel bimodal based finger pose estimation algorithm capable of simultaneously and accurately predicting comprehensive finger pose information. A bimodal input is explored, including a capacitive image and a fingerprint patch obtained from the touchscreen with an under-screen fingerprint sensor. Our approach leads to reliable estimation of roll angle, which is not achievable using only a single modality. In addition, the prediction…
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Taxonomy
TopicsInteractive and Immersive Displays · Hand Gesture Recognition Systems · User Authentication and Security Systems
