Wearable physiological sensors can provide a faithful record of a patient's physiological states without constant attention of caregivers. A computer program that can infer human activities from physiological recordings will be an valuable tool for physicians. In this paper we investigate to what extent current machine learning algorithms can correctly identify human activities from physiological sensors. We further identify two challenges that developers need to address. The first problem is that the labels of training data are inevitably noisy due to difficulties of annotating thousands hours of data. The second problem lies in the continuous nature of human activities, which violates the independence assumption made by many learning algo...
The rapid growing of the population age in industrialized societies calls for advanced tools to cont...
Data used in studies about physical activity is primarily collected from questionnaires and other su...
Several applications demanding the development of small networks of on-body sensors, such as motion ...
Wearable physiological sensors can provide a faithful record of a patient’s physiological states wit...
Human activity recognition (HAR) is vital in a wide range of real-life applications such as health m...
Healthcare using body sensor data has been getting huge research attentions by a wide range of resea...
Recognising human activities in sequential data from sensors is a challenging research area. A signi...
Abstract. Recognising daily activity patterns of people from low-level sensory data is an important ...
The purpose of this investigation is to improve the accuracy of the software used in recognizing pat...
To date, research on sensor-equipped mobile devices has primarily focused on the purely supervised t...
The evaluation of the effectiveness of different machine learning algorithms on a publicly available...
The evaluation of the effectiveness of different machine learning algorithms on a publicly available...
"Human activity recognition" is essential to the success of numerous real-world applications, such a...
Human activity detection has evolved due to the advances and developments of machine learning techni...
Abstract. Sensor-based human activity recognition aims to automati-cally identify human activities f...
The rapid growing of the population age in industrialized societies calls for advanced tools to cont...
Data used in studies about physical activity is primarily collected from questionnaires and other su...
Several applications demanding the development of small networks of on-body sensors, such as motion ...
Wearable physiological sensors can provide a faithful record of a patient’s physiological states wit...
Human activity recognition (HAR) is vital in a wide range of real-life applications such as health m...
Healthcare using body sensor data has been getting huge research attentions by a wide range of resea...
Recognising human activities in sequential data from sensors is a challenging research area. A signi...
Abstract. Recognising daily activity patterns of people from low-level sensory data is an important ...
The purpose of this investigation is to improve the accuracy of the software used in recognizing pat...
To date, research on sensor-equipped mobile devices has primarily focused on the purely supervised t...
The evaluation of the effectiveness of different machine learning algorithms on a publicly available...
The evaluation of the effectiveness of different machine learning algorithms on a publicly available...
"Human activity recognition" is essential to the success of numerous real-world applications, such a...
Human activity detection has evolved due to the advances and developments of machine learning techni...
Abstract. Sensor-based human activity recognition aims to automati-cally identify human activities f...
The rapid growing of the population age in industrialized societies calls for advanced tools to cont...
Data used in studies about physical activity is primarily collected from questionnaires and other su...
Several applications demanding the development of small networks of on-body sensors, such as motion ...