The paper presents a technique to automatically track the progress of maintenance or assembly tasks using body worn sensors. The technique is based on a novel way of combining data from accelerometers with simple frequency matching sound classifcation. This includes the intensity analysis of signals from microphones at different body locations to correlate environmental sounds with user activity. To evaluate our method we apply it to activities in a wood shop. On a simulated assembly task our system can successfully segment and identify most shop activities in a continuous data stream with zero false positives and 84.4% accuracy
In many sectors such as forestry, road construction and manufacturing industry motorized, hand-held ...
In this paper, we present HTAD: A Home Tasks Activities Dataset. The dataset contains wrist-accelero...
Smart Environments should be able to understand a user’s need without explicit interaction. In order...
Most gesture recognition systems analyze gestures intended for communication (e.g. sign language) or...
In order to provide relevant information to mobile users, such as workers engaging in the manual tas...
International audienceIn this paper, we address the problem of recognizing the current activity perf...
Abstract. Wearable computers promise the ability to access information and computing resources direc...
This thesis investigates the use of wearable sensors to recognize human activity. The activity of th...
This paper explores the use of wearable eye-tracking to detect physical activities and location info...
International audienceWe address the problem of recognizing the current activity performed by a huma...
This project is aimed at designing, simulating and constructing a wearable device capable of perform...
In this thesis we use algorithms on data from body-worn sensors to detect physical gestures and acti...
We describe a system for obtaining environmental context through audio for applications and user int...
The aim of wearable computing is to build intelligent machines that provide automatic and autonomous...
This thesis introduces an approach for tracking three different activities, including their context ...
In many sectors such as forestry, road construction and manufacturing industry motorized, hand-held ...
In this paper, we present HTAD: A Home Tasks Activities Dataset. The dataset contains wrist-accelero...
Smart Environments should be able to understand a user’s need without explicit interaction. In order...
Most gesture recognition systems analyze gestures intended for communication (e.g. sign language) or...
In order to provide relevant information to mobile users, such as workers engaging in the manual tas...
International audienceIn this paper, we address the problem of recognizing the current activity perf...
Abstract. Wearable computers promise the ability to access information and computing resources direc...
This thesis investigates the use of wearable sensors to recognize human activity. The activity of th...
This paper explores the use of wearable eye-tracking to detect physical activities and location info...
International audienceWe address the problem of recognizing the current activity performed by a huma...
This project is aimed at designing, simulating and constructing a wearable device capable of perform...
In this thesis we use algorithms on data from body-worn sensors to detect physical gestures and acti...
We describe a system for obtaining environmental context through audio for applications and user int...
The aim of wearable computing is to build intelligent machines that provide automatic and autonomous...
This thesis introduces an approach for tracking three different activities, including their context ...
In many sectors such as forestry, road construction and manufacturing industry motorized, hand-held ...
In this paper, we present HTAD: A Home Tasks Activities Dataset. The dataset contains wrist-accelero...
Smart Environments should be able to understand a user’s need without explicit interaction. In order...