Sensor-based activity recognition aims to predict users' activities from multi-dimensional streams of various sensor readings received from ubiquitous sensors. To use machine learning techniques for sensor-based activity recognition, previous approaches focused on composing a feature vector to represent sensor-reading streams received within a period of various lengths. With the constructed feature vectors, e.g., using predefined orders of moments in statistics, and their corresponding labels of activities, standard classification algorithms can be applied to train a predictive model, which will be used to make predictions online. However, we argue that in this way some important information, e.g., statistical information captured by higher...
Personal wearables such as smartphones or smartwatches are increasingly utilized in everyday life. F...
Personal wearables such as smartphones or smartwatches are increasingly utilized in everyday life. F...
We present an approach to activity discovery, the unsupervised identification and modeling of human ...
Sensor-based activity recognition aims to predict users’ activities from multi-dimensional streams o...
Sensor-based activity recognition aims to predict users’ activities from multi-dimensional streams o...
Wearable-sensor-based activity recognition aims to predict users' activities from multi-dimensional ...
Supervised learning methods have been widely applied to activity recognition. The prevalent success ...
Supervised learning methods have been widely applied to activity recognition. The prevalent success ...
Supervised learning methods have been widely applied to activity recognition. The prevalent success ...
Feature-engineering-based machine learning models and deep learning models have been explored for we...
Feature-engineering-based machine learning models and deep learning models have been explored for we...
Numerous methods have been proposed to address different aspects of human activity recognition. Howe...
Activity recognition is gaining increasing interest in the artificial intelligence (AI) and ubiquito...
The power of end-to-end deep learning techniques to automatically learn latent high-level features f...
We propose a sparse-coding framework for activity recognition in ubiquitous and mobile computing tha...
Personal wearables such as smartphones or smartwatches are increasingly utilized in everyday life. F...
Personal wearables such as smartphones or smartwatches are increasingly utilized in everyday life. F...
We present an approach to activity discovery, the unsupervised identification and modeling of human ...
Sensor-based activity recognition aims to predict users’ activities from multi-dimensional streams o...
Sensor-based activity recognition aims to predict users’ activities from multi-dimensional streams o...
Wearable-sensor-based activity recognition aims to predict users' activities from multi-dimensional ...
Supervised learning methods have been widely applied to activity recognition. The prevalent success ...
Supervised learning methods have been widely applied to activity recognition. The prevalent success ...
Supervised learning methods have been widely applied to activity recognition. The prevalent success ...
Feature-engineering-based machine learning models and deep learning models have been explored for we...
Feature-engineering-based machine learning models and deep learning models have been explored for we...
Numerous methods have been proposed to address different aspects of human activity recognition. Howe...
Activity recognition is gaining increasing interest in the artificial intelligence (AI) and ubiquito...
The power of end-to-end deep learning techniques to automatically learn latent high-level features f...
We propose a sparse-coding framework for activity recognition in ubiquitous and mobile computing tha...
Personal wearables such as smartphones or smartwatches are increasingly utilized in everyday life. F...
Personal wearables such as smartphones or smartwatches are increasingly utilized in everyday life. F...
We present an approach to activity discovery, the unsupervised identification and modeling of human ...