In this paper we propose a two-phase methodology for designing datasets that can be used to test and evaluate activity recognition algorithms. The trade offs between time, cost and recognition performance is one challenge. The effectiveness of a dataset, which contrasts the incremental performance gain with the increase in time, efforts, and number and cost of sensors is another challenging area that is often overlooked. Our proposed methodology is iterative and adaptive and addresses issues of sensor use modality and its effect on overall performance. We present our methodology and provide an assessment for its effectiveness using both a simulation model and a real world deployment. © 2010 Springer-Verlag
Human activity recognition (HAR) is the automated recognition of individual or group activities from...
AbstractOPPORTUNITY is project under the EU FET-Open funding11We acknowledge the support of the comm...
Mobile sensor-based activity recognition is a growing research field with important applications are...
Abstract. In this paper we propose a two-phase methodology for designing datasets that can be used t...
The number of Internet-of-Things (IoT) and edge devices has exploded in the last decade, providing n...
Activity classification from smart environment data is typically done employing ad hoc solutions cus...
Models of human habits in smart spaces can be expressed by using a multitude of representations whos...
With the proliferation of relatively cheap Internet of Things (IoT) devices, Smart Environments have...
The development of activity recognition techniques relies on the availability of datasets of gesture...
In this article, we study activity recognition in the context of sensor-rich environments. In these ...
Smart environments are heterogeneous architectures with a broad range of heterogeneous electronic de...
In spite of the importance of activity recognition (AR) for intelligent human-computer interaction i...
International audienceThis paper describes the results of experiments where information about places...
A smart space is an environment, mainly equipped with Internet-of-Things (IoT) technologies, able to...
The generation of actual sensory data in real-world deployments of pervasive spaces is very costly a...
Human activity recognition (HAR) is the automated recognition of individual or group activities from...
AbstractOPPORTUNITY is project under the EU FET-Open funding11We acknowledge the support of the comm...
Mobile sensor-based activity recognition is a growing research field with important applications are...
Abstract. In this paper we propose a two-phase methodology for designing datasets that can be used t...
The number of Internet-of-Things (IoT) and edge devices has exploded in the last decade, providing n...
Activity classification from smart environment data is typically done employing ad hoc solutions cus...
Models of human habits in smart spaces can be expressed by using a multitude of representations whos...
With the proliferation of relatively cheap Internet of Things (IoT) devices, Smart Environments have...
The development of activity recognition techniques relies on the availability of datasets of gesture...
In this article, we study activity recognition in the context of sensor-rich environments. In these ...
Smart environments are heterogeneous architectures with a broad range of heterogeneous electronic de...
In spite of the importance of activity recognition (AR) for intelligent human-computer interaction i...
International audienceThis paper describes the results of experiments where information about places...
A smart space is an environment, mainly equipped with Internet-of-Things (IoT) technologies, able to...
The generation of actual sensory data in real-world deployments of pervasive spaces is very costly a...
Human activity recognition (HAR) is the automated recognition of individual or group activities from...
AbstractOPPORTUNITY is project under the EU FET-Open funding11We acknowledge the support of the comm...
Mobile sensor-based activity recognition is a growing research field with important applications are...