触摸屏
人工智能
计算机科学
计算机视觉
移动设备
跟踪(教育)
职位(财务)
人机交互
财务
心理学
教育学
操作系统
经济
作者
Keunwoo Park,Sunbum Kim,Youngwoo Yoon,Taekyun Kim,Geehyuk Lee
标识
DOI:10.1145/3379337.3415818
摘要
Near-surface multi-finger tracking (NMFT) technology expands the input space of touchscreens by enabling novel interactions such as mid-air and finger-aware interactions. We present DeepFisheye, a practical NMFT solution for mobile devices, that utilizes a fisheye camera attached at the bottom of a touchscreen. DeepFisheye acquires the image of an interacting hand positioned above the touchscreen using the camera and employs deep learning to estimate the 3D position of each fingertip. We created two new hand pose datasets comprising fisheye images, on which our network was trained. We evaluated DeepFisheye's performance for three device sizes. DeepFisheye showed average errors with approximate value of 20 mm for fingertip tracking across the different device sizes. Additionally, we created simple rule-based classifiers that estimate the contact finger and hand posture from DeepFisheye's output. The contact finger and hand posture classifiers showed accuracy of approximately 83 and 90%, respectively, across the device sizes.
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