A Communication Layer for Integrated Sensors and Robotic ecology Solutions to Ambient Intelligence
Giuseppe Amato, Stefano Chessa, Mauro Dragone, Claudio Gennaro,, Claudio Vairo

TL;DR
This paper introduces a communication framework that simplifies building heterogeneous robotic ecologies for ambient intelligence, supporting diverse devices and environments with a consistent API, demonstrated in real-world test-beds.
Contribution
The paper presents a novel communication framework that provides transparent, cross-platform support for heterogeneous devices in robotic ecologies, enhancing adaptability and integration.
Findings
Framework supports multiple programming languages and OS
Enables seamless integration of sensors, actuators, and robots
Successfully tested in real-world ambient intelligence scenarios
Abstract
This paper presents a communication framework built to simplify the construction of robotic ecologies, i.e., networks of heterogeneous computational nodes interfaced with sensors, actuators, and mobile robots. Building integrated ambient intelligence (AmI) solutions out of such a wide range of heterogeneous devices is a key requirement for a range of application domains, such as home automation, logistic, security and Ambient Assisted Living (AAL). This goal is challenging since these ecologies need to adapt to changing environments and especially when they include tiny embedded devices with limited computational resources. We discuss a number of requirements characterizing this type of systems and illustrate how they have been addressed in the design of the new communication framework. The most distinguishing aspect of our frameworks is the transparency with which the same…
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Taxonomy
TopicsContext-Aware Activity Recognition Systems · Energy Efficient Wireless Sensor Networks · IoT and Edge/Fog Computing
