Abstract — We present a new approach to multi-signal ges-ture recognition that attends to simultaneous body and hand movements. The system examines temporal sequences of dual-channel input signals obtained via statistical inference that indicate 3D body pose and hand pose. Learning gesture patterns from these signals can be quite challenging due to the existence of long-range temporal-dependencies and low signal-to-noise ratio (SNR). We incorporate a Gaussian temporal-smoothing kernel into the inference framework, capturing long-range temporal-dependencies and increasing the SNR efficiently. An extensive set of experiments was performed, allowing us to (1) show that combining body and hand signals significantly improves the recognition accu...
Gestures are spatiotemporal signals that contain valuable information. Humans can understand gestur...
© Springer International Publishing Switzerland 2015. We describe in this paper our gesture detectio...
[[abstract]]The paper introduces a model based hand gesture recognition system, which consists of th...
We present a new approach to multi-signal gesture recognition that attends to simultaneous body and ...
The primary goal of hand gesture recognition with wearables is to facilitate the realization of gest...
We present a new approach to gesture recognition that tracks body and hands simultaneously and recog...
Spotting patterns of interest in an input signal is a very useful task in many different fields incl...
Using innovative input methods, such as speech commands and hand gestures, is of growing interest fo...
[[abstract]]In this paper, we introduce a hand gesture recognition system to recognize continuous ge...
Many approaches to pattern recognition are founded on probability theory, and can be broadly charact...
Abstract 3D skeletal data has recently attracted wide attention in human behavior analysis for its ...
In this paper, we introduce a hand gesture recognition system to recognize continuous gesture before...
Hidden Markov Models have been effectively used in time series based pattern recognition problems in...
We present a method to track and recognize shape-changing hand gestures simultaneously. The switchin...
This thesis investigates a gesture segmentation and recognition scheme that employs a random forest ...
Gestures are spatiotemporal signals that contain valuable information. Humans can understand gestur...
© Springer International Publishing Switzerland 2015. We describe in this paper our gesture detectio...
[[abstract]]The paper introduces a model based hand gesture recognition system, which consists of th...
We present a new approach to multi-signal gesture recognition that attends to simultaneous body and ...
The primary goal of hand gesture recognition with wearables is to facilitate the realization of gest...
We present a new approach to gesture recognition that tracks body and hands simultaneously and recog...
Spotting patterns of interest in an input signal is a very useful task in many different fields incl...
Using innovative input methods, such as speech commands and hand gestures, is of growing interest fo...
[[abstract]]In this paper, we introduce a hand gesture recognition system to recognize continuous ge...
Many approaches to pattern recognition are founded on probability theory, and can be broadly charact...
Abstract 3D skeletal data has recently attracted wide attention in human behavior analysis for its ...
In this paper, we introduce a hand gesture recognition system to recognize continuous gesture before...
Hidden Markov Models have been effectively used in time series based pattern recognition problems in...
We present a method to track and recognize shape-changing hand gestures simultaneously. The switchin...
This thesis investigates a gesture segmentation and recognition scheme that employs a random forest ...
Gestures are spatiotemporal signals that contain valuable information. Humans can understand gestur...
© Springer International Publishing Switzerland 2015. We describe in this paper our gesture detectio...
[[abstract]]The paper introduces a model based hand gesture recognition system, which consists of th...