In this paper we present our system for online context recognition of multimodal sequences acquired from multiple sensors. The system uses Dynamic Time Warping (DTW) to recognize multimodal sequences of different lengths, embedded in continuous data streams. We evaluate the performance of our system on two real world datasets: 1) accelerometer data acquired from performing two hand gestures and 2) NOKIA's benchmark dataset for context recognition. The results from both datasets demonstrate that the system can perform online context recognition efficiently and achieve high recognition accuracy
From wearable devices to depth cameras, researchers have exploited various multimodal data to recogn...
We present a system for efficient dynamic hand gesture recognition based on a single time-of-flight ...
In the context of tele-monitoring, great interest is presently devoted to physical activity, mainly ...
In this paper, we present our system for online context recognition of multimodal sequences acquired...
Sensor fusion is concerned with gaining information from multiple sensors by fusing across raw data,...
Abstract. In this paper, a framework to recognize human actions from acceler-ation data is proposed....
We present an algorithm for Dynamic Time Warp-ing (DTW) on multi-dimensional time series (MD-DTW). T...
With Microsoft's launch of Kinect in 2010, and release of Kinect SDK in 2011, numerous applications ...
Smart devices of everyday use (such as smartphones and wearables) are increasingly integrated with s...
Cyber-physical systems, which closely integrate physical systems and humans, can be applied to a wid...
Cyber-Physical Systems (CPS) are tightly coupled with the environment, and therefore it is important...
International audienceGesture recognition is one of the important tasks for human System Interaction...
We propose a modified dynamic time warping (DTW) algorithm that compares gesture-position sequences ...
Activity recognition deals with the task of figuring out a person’s current activity based on the re...
In this paper we present an approach for real-time gesture recognition using exclusively 1D sensor d...
From wearable devices to depth cameras, researchers have exploited various multimodal data to recogn...
We present a system for efficient dynamic hand gesture recognition based on a single time-of-flight ...
In the context of tele-monitoring, great interest is presently devoted to physical activity, mainly ...
In this paper, we present our system for online context recognition of multimodal sequences acquired...
Sensor fusion is concerned with gaining information from multiple sensors by fusing across raw data,...
Abstract. In this paper, a framework to recognize human actions from acceler-ation data is proposed....
We present an algorithm for Dynamic Time Warp-ing (DTW) on multi-dimensional time series (MD-DTW). T...
With Microsoft's launch of Kinect in 2010, and release of Kinect SDK in 2011, numerous applications ...
Smart devices of everyday use (such as smartphones and wearables) are increasingly integrated with s...
Cyber-physical systems, which closely integrate physical systems and humans, can be applied to a wid...
Cyber-Physical Systems (CPS) are tightly coupled with the environment, and therefore it is important...
International audienceGesture recognition is one of the important tasks for human System Interaction...
We propose a modified dynamic time warping (DTW) algorithm that compares gesture-position sequences ...
Activity recognition deals with the task of figuring out a person’s current activity based on the re...
In this paper we present an approach for real-time gesture recognition using exclusively 1D sensor d...
From wearable devices to depth cameras, researchers have exploited various multimodal data to recogn...
We present a system for efficient dynamic hand gesture recognition based on a single time-of-flight ...
In the context of tele-monitoring, great interest is presently devoted to physical activity, mainly ...