Wimmer, R.R.WimmerKranz, M.M.KranzBoring, S.S.BoringSchmidt, AlbrechtAlbrechtSchmidt2022-03-102022-03-102007https://publica.fraunhofer.de/handle/publica/35763910.1109/INSS.2007.4297395In this paper we introduce two pieces of activity-sensing furniture using networked capacitive sensors. Cap Table and CapShelf are two example applications for activity detection and context acquisition realized with the CapSensing Toolkit [1]. Both instances are representatives of a greater class of scenarios where networked sensing can compete with other technologies. CapTable is a simple wooden table equipped with capacitive sensors. Hand and body motion can be tracked above and around the table with high resolution. Additionally, conductive and non-conductive objects can be tracked and discriminated. The same features apply to CapShelf, a shelf that can monitor where people are reaching, and partially track the amount of items still in the shelf. We argue, that capacitive sensors provide huge benefits for real-world, privacy-sensitive, and unobtrusive data acquisition and implicit human-computer interaction.en005CapTable and CapShelf - Unobtrusive activity recognition using networked capacitive sensorsconference paper