Pocket, Bag, Hand, etc. - Automatically Detecting Phone Context through Discovery
نویسندگان
چکیده
Most top end smart phones come with a handful of sensors today. We see this growth continuing over the next decade with an explosion of new distributed sensor applications supporting both personal sensing with local use (e.g., healthcare) to distributed sensing with large scale community (e.g., air quality, stress levels and well being), population and global use. One fundamental building block for distributed sensing systems on mobile phones is the automatic detection of accurate, robust and low-cost phone sensing context ; that is, the position of the phone carried by a person (e.g., in the pocket, in the hand, inside a backpack, on the hip, arm mounted, etc.) in relation to the event being sensed. Mobile phones carried by people may have many different sensing contexts that limit the use of a sensor, for example: an air-quality sensor offers poor sensing quality buried in a person’s backpack. We present the preliminary design, implementation, and evaluation of Discovery, a framework to automatically detect the phone sensing context in a robust, accurate and low-cost manner, as people move about in their everyday lives. The initial system implements a set of sophisticated inference models that include Gaussian Mixture Model and Support Vector Machine on the Nokia N95 and Apple iPhone with focus on a limited set of sensors and contexts. Initial results indicate this is a promising approach to provide phone sensing context on mobile phones.
منابع مشابه
Pocket Gamelan: tuneable trajectories for flying sources in Mandala 3 and Mandala 4
This paper describes two new live performance scenarios for performing music using bluetooth-enabled mobile phones. Interaction between mobile phones via wireless link is a key feature of the performance interface for each scenario. Both scenarios are discussed in the context of two publicly performed works for an ensemble of players in which mobile phone handsets are used both as sound sources...
متن کاملHand, belt, pocket or bag: Practical activity tracking with mobile phones.
For rehabilitation and diagnoses, an understanding of patient activities and movements is important. Modern smartphones have built in accelerometers which promise to enable quantifying minute-by-minute what patients do (e.g. walk or sit). Such a capability could inform recommendations of physical activities and improve medical diagnostics. However, a major problem is that during everyday life, ...
متن کاملRecognizing a Mobile Phone's Storing Position as a Context of a Device and a User
A mobile phone is getting smarter by employing a sensor and awareness of various contexts about a user and the terminal itself. In this paper, we deal with 9 storing positions of a smartphone on the body as a context of a device itself and a user: 1) around the neck (hanging), 2) chest pocket, 3) jacket pocket (side), 4) front pocket of trousers, 5) back pocket of trousers, 6) backpack, 7) hand...
متن کاملInvestigating the Impact of Possession-Way of a Smartphone on Action Recognition †
For the past few decades, action recognition has been attracting many researchers due to its wide use in a variety of applications. Especially with the increasing number of smartphone users, many studies have been conducted using sensors within a smartphone. However, a lot of these studies assume that the users carry the device in specific ways such as by hand, in a pocket, in a bag, etc. This ...
متن کاملConcept drift detection in business process logs using deep learning
Process mining provides a bridge between process modeling and analysis on the one hand and data mining on the other hand. Process mining aims at discovering, monitoring, and improving real processes by extracting knowledge from event logs. However, as most business processes change over time (e.g. the effects of new legislation, seasonal effects and etc.), traditional process mining techniques ...
متن کامل