Portable electronic systems allow the analysis and monitoring of continuous time signals, such as human activity, integrating deep learning techniques with cloud computing, causing network traffic and high energy consumption. In addition, the use of algorithms based on neural networks are a very widespread solution in these applications, but they have a high computational cost, not suitable for edge devices. In this context, solutions are created that bring data analysis closer to the edge of the network, so in this paper models adapted to an edge device for the recognition of human activity are evaluated, considering characteristics such as inference time, memory, and precision. Two categories of models based on deep and convolutional neur...
Human Activity Recognition provides valuable contextual information for wellbeing, healthcare, and s...
Human Activity Recognition (HAR) has become an active field of research in the computer vision commu...
This paper explores the performance of Google’s Edge TPU on feed-forward neural networks. We conside...
Edge computing aims to integrate computing into everyday settings, enabling the system to be context...
Edge-AI uses Artificial Intelligence algorithms directly embedded on a device, contrary to a remote ...
The exponential increase in internet data poses several challenges to cloud systems and data centers...
According to the Industry 4.0 vision, humans in a smart factory, should be equipped with formidable ...
The increasing diffusion of tiny wearable devices and, at the same time, the advent of machine learn...
International audienceEdge-AI is the use of AI algorithms directly embedded on a device contrary to ...
This study investigates activity classification using deep learning for developing an energy efficie...
This paper presents a wearable device, fitted on the waist of a participant that recognizes six acti...
In the era of IoT (Internet of Things) and edge computing, there is a rising need for real-time appl...
Sensor-based human activity recognition (HAR) has drawn extensive attention from the research commun...
Human action recognition has a wide range of applications, including Ambient Intelligence systems an...
Human activity recognition is a crucial task in several modern applications based on the Internet of...
Human Activity Recognition provides valuable contextual information for wellbeing, healthcare, and s...
Human Activity Recognition (HAR) has become an active field of research in the computer vision commu...
This paper explores the performance of Google’s Edge TPU on feed-forward neural networks. We conside...
Edge computing aims to integrate computing into everyday settings, enabling the system to be context...
Edge-AI uses Artificial Intelligence algorithms directly embedded on a device, contrary to a remote ...
The exponential increase in internet data poses several challenges to cloud systems and data centers...
According to the Industry 4.0 vision, humans in a smart factory, should be equipped with formidable ...
The increasing diffusion of tiny wearable devices and, at the same time, the advent of machine learn...
International audienceEdge-AI is the use of AI algorithms directly embedded on a device contrary to ...
This study investigates activity classification using deep learning for developing an energy efficie...
This paper presents a wearable device, fitted on the waist of a participant that recognizes six acti...
In the era of IoT (Internet of Things) and edge computing, there is a rising need for real-time appl...
Sensor-based human activity recognition (HAR) has drawn extensive attention from the research commun...
Human action recognition has a wide range of applications, including Ambient Intelligence systems an...
Human activity recognition is a crucial task in several modern applications based on the Internet of...
Human Activity Recognition provides valuable contextual information for wellbeing, healthcare, and s...
Human Activity Recognition (HAR) has become an active field of research in the computer vision commu...
This paper explores the performance of Google’s Edge TPU on feed-forward neural networks. We conside...