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Evaluation of Microgesture Recognition using a Smartwatch

机译:使用SmartWatch评估微吸管识别

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Gesture based interaction and its recognition has been an area of active research with the growing popularity of wearables. We here propose an approach to detect fine-grained finger and palm motions using inertial sensors in a commercial smartwatch. A user specific SVM based classifier is developed for 7 microgestures with a classification accuracy of 94.4%. We extend this to a user adaptive model by including a few representative instances of a new user and achieve a classification accuracy of 91.7%. Further, we are able to differentiate between variations of a microgesture using three fundamental building blocks - distance, speed and orientation. A novel regression based approach is presented to predict the distance parameter. The idea is demonstrated on a swipe gesture with an error of 14%.
机译:基于姿态的互动及其认可是具有越来越多的可穿戴物的积极研究领域。我们在此提出了一种方法来使用商业智能手表中的惯性传感器检测细粒手指和棕榈运动的方法。基于用户的特定SVM的分类器是为7个微粒的分类,分类精度为94.4%。我们通过包括新用户的几个代表实例来扩展到用户自适应模型,并达到91.7%的分类准确性。此外,我们能够使用三个基本构建块 - 距离,速度和方向来区分微生物体的变化。提出了一种基于新的回归方法来预测距离参数。这些想法是在刷手势上展示的,误差为14%。

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