dWatch: A Personal Wrist Watch for Smart Environments
نویسندگان
چکیده
Intelligent environments, such as smart homes or domotic systems, have the potential to support people in many of their ordinary activities, by allowing complex control strategies for managing various capabilities of a house or a building: lights, doors, temperature, power and energy, music, etc. Such environments, typically, provide these control strategies by means of computers, touch screen panels, mobile phones, tablets, or In-House Displays. An unobtrusive and typically wearable device, like a bracelet or a wrist watch, that lets users perform various operations in their homes and to receive notifications from the environment, could strengthen the interaction with such systems, in particular for those people not accustomed to computer systems (e.g., elderly) or in contexts where users are not in front of a screen. Moreover, such wearable devices can reduce the technological gap introduced in the environment by home automation systems, thus permitting a higher level of acceptance in the daily activities and improving the interaction between the environment and its inhabitants. In this paper, we introduce the dWatch, a personal wearable notification and control device, integrated in an intelligent platform for domotic systems, designed to optimize the way people use the environment, and built as a wrist watch so that it is easily accessible, worn by people on a regular basis and unobtrusive.
منابع مشابه
A smart watch with embedded sensors to recognize objects, grasps and forearm gestures
This article proposes a smart watch for the recognition of gestures with objects. The watch is designed to embed different kinds of sensors enabling several functionalities: the recognition of tagged objects by means of RFID technology; the recognition of gestures of the forearm using inertial sensors; the recognition of fingers gestures, hand gestures and grasps by sensing the force exerted by...
متن کاملTwist 'n' Knock: A One-handed Gesture for Smart Watches
Interacting with a smart watch requires a fair amount of attention, which can disrupt a user’s primary activity. While single-handed gestures have been developed for other platforms, they are cumbersome to perform with a watch. A simple interaction is needed that can be used to quickly and subtly access the watch at the user’s convenience. In this paper, we developed Twist 'n' Knock—a one-hande...
متن کاملUser Behavior Classification Based on Smart Watch and Machine Learning Algorithm
Recently, many wearable devices have been developed as IoT technology grows. Among them, smart watch is the friendliest wearable device in daily lives. Many companies are trying to improve the device or system to provide personal service as user’s behavior. This paper proposes an user behavior classification system using smart watch and machine learning algorithm to provide personal service wit...
متن کاملLightweight wrist photoplethysmography for heavy exercise: motion robust heart rate monitoring algorithm
The challenge of heart rate monitoring based on wrist photoplethysmography (PPG) during heavy exercise is addressed. PPG is susceptible to motion artefacts, which have to be mitigated for accurate heart rate estimation. Motion artefacts are particularly apparent for wrist devices, for example, a smart watch, because of the high mobility of the arms. Proposed is a low complexity highly accurate ...
متن کاملParadigm-Shifting Players for IoT: Smart-Watches for Intensive Care Monitoring
Wearable devices, e.g. smart-watches, are gaining popularity in many fields and in wellness monitoring too. In this paper we propose an IoT application to alert the medical doctor assigned to a critical unit by using a smart-watch. The wearable device improves the efficacy of monitoring patients at risk in hospital units allowing the medical doctor to access information at any time and from any...
متن کامل