Grasp Interaction Using Physiological Sensor Data
نویسنده
چکیده
Copyright is held by the author/owner. CHI 2011, May 7-12 2011, Vancouver, BC, Canada. ACM 978-1-4503-0268-5/11/05 Abstract The way we grasp an object depends on several factors, for example the intended goal or the hand's anatomy. Therefore, a grasp can convey meaningful information about its context. Inferring these factors from a grasp allows us to enhance interaction with tools and artifacts. Previous research on grasp interaction has focused on capturing grasps with grasp-sensitive surfaces. However, one may also capture the grasp a person applies by measuring physiological properties of the person. This paper provides an overview of sensing techniques and physiological properties that can be utilized for determining how a person grasps on object.
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تاریخ انتشار 2011