Human activity recognition is a challenging problem for context-aware systems and applications. It is gaining interest due to the ubiquity of different sensor sources, wearable smart objects, ambient sensors, etc. This task is usually approached as a supervised machine learning problem, where a label is to be predicted given some input data, such as the signals retrieved from different sensors. For tackling the human activity recognition problem in sensor network environments, in this paper we propose the use of deep learning (convolutional neural networks) to perform activity recognition using the publicly available OPPORTUNITY dataset. Instead of manually choosing a suitable topology, we will let an evolutionary algorithm design the optim...
It is undeniable that mobile devices have become an inseparable part of human’s daily routines due t...
In recent years, focus on the physical activities recognition has gained a lot of momentum due to th...
Feature-engineering-based machine learning models and deep learning models have been explored for we...
Human activity recognition is a challenging problem for context-aware systems and applications. It i...
Human activity recognition is a challenging problem for context-aware systems and applications. It i...
Human activity recognition is a challenging problem for context-aware systems and applications. It i...
Human activity recognition is a challenging problem for context-aware systems and applications. It i...
Human activity recognition is a challenging problem for context-aware systems and applications. It i...
Abstract In the field of machine intelligence and ubiquitous computing, there has been a growing int...
Human activity recognition (HAR) problems have traditionally been solved by using engineered feature...
Human Activity Recognition provides valuable contextual information for wellbeing, healthcare, and s...
Human physical activity recognition based on wearable sen-sors has applications relevant to our dail...
peer reviewedWith a tremendous increase in mobile and wearable devices, the study of sensor-based ac...
International audienceWith a tremendous increase in mobile and wearable devices, the study of sensor...
It is undeniable that mobile devices have become an inseparable part of human’s daily routines due t...
It is undeniable that mobile devices have become an inseparable part of human’s daily routines due t...
In recent years, focus on the physical activities recognition has gained a lot of momentum due to th...
Feature-engineering-based machine learning models and deep learning models have been explored for we...
Human activity recognition is a challenging problem for context-aware systems and applications. It i...
Human activity recognition is a challenging problem for context-aware systems and applications. It i...
Human activity recognition is a challenging problem for context-aware systems and applications. It i...
Human activity recognition is a challenging problem for context-aware systems and applications. It i...
Human activity recognition is a challenging problem for context-aware systems and applications. It i...
Abstract In the field of machine intelligence and ubiquitous computing, there has been a growing int...
Human activity recognition (HAR) problems have traditionally been solved by using engineered feature...
Human Activity Recognition provides valuable contextual information for wellbeing, healthcare, and s...
Human physical activity recognition based on wearable sen-sors has applications relevant to our dail...
peer reviewedWith a tremendous increase in mobile and wearable devices, the study of sensor-based ac...
International audienceWith a tremendous increase in mobile and wearable devices, the study of sensor...
It is undeniable that mobile devices have become an inseparable part of human’s daily routines due t...
It is undeniable that mobile devices have become an inseparable part of human’s daily routines due t...
In recent years, focus on the physical activities recognition has gained a lot of momentum due to th...
Feature-engineering-based machine learning models and deep learning models have been explored for we...