We study natural human activity under difficult settings of cluttered background, volatile illumination, and frequent occlusion. To that end, a two-stage method for hand and hand-object interaction detection is developed. First, ac-tivity proposals are generated from multiple sub-regions in the scene. Then, these are integrated using a second-stage classifier. We study a set of descriptors for detection and ac-tivity recognition in terms of performance and speed. With the overarching goal of reducing ‘lab setting bias’, a case study is introduced with a publicly available annotated RGB and depth dataset. The dataset was captured using a Kinect under real-world driving settings. The approach is moti-vated by studying actions-as well as seman...
International audienceInterest in gesture-based interaction has been growing considerably, but most ...
We present a machine learning technique to recognize ges-tures and estimate metric depth of hands fo...
In this paper we present a highly accurate algorithm for the detection of human hands in real-life 2...
We address the task of pixel-level hand detection in the context of ego-centric cameras. Extracting ...
Hands appear very often in egocentric video, and their appearance and pose give important cues about...
Wearable computing technologies are advancing rapidly and enabling users to easily record daily acti...
In this work we study the use of 3D hand poses to recognize first-person dynamic hand actions intera...
Natural User Interfaces can be an effective way to reduce driver's inattention during the driving ac...
A large number of works in egocentric vision have concentrated on action and object recognition. Det...
In this project, we propose an action estimation pipeline based on the simultaneous recognition of t...
The dataset contains RGB and depth version video frames of various hand movements captured with the ...
We present a fast and accurate algorithm for the detection of human hands in real-life 2D image sequ...
Hand gestures can be used for natural and intuitive human-computer interaction. To achieve this goal...
Abstract. This paper describes our ongoing research work on deviceless interac-tion using hand gestu...
This paper describes our ongoing research work on deviceless interaction using hand gesture recognit...
International audienceInterest in gesture-based interaction has been growing considerably, but most ...
We present a machine learning technique to recognize ges-tures and estimate metric depth of hands fo...
In this paper we present a highly accurate algorithm for the detection of human hands in real-life 2...
We address the task of pixel-level hand detection in the context of ego-centric cameras. Extracting ...
Hands appear very often in egocentric video, and their appearance and pose give important cues about...
Wearable computing technologies are advancing rapidly and enabling users to easily record daily acti...
In this work we study the use of 3D hand poses to recognize first-person dynamic hand actions intera...
Natural User Interfaces can be an effective way to reduce driver's inattention during the driving ac...
A large number of works in egocentric vision have concentrated on action and object recognition. Det...
In this project, we propose an action estimation pipeline based on the simultaneous recognition of t...
The dataset contains RGB and depth version video frames of various hand movements captured with the ...
We present a fast and accurate algorithm for the detection of human hands in real-life 2D image sequ...
Hand gestures can be used for natural and intuitive human-computer interaction. To achieve this goal...
Abstract. This paper describes our ongoing research work on deviceless interac-tion using hand gestu...
This paper describes our ongoing research work on deviceless interaction using hand gesture recognit...
International audienceInterest in gesture-based interaction has been growing considerably, but most ...
We present a machine learning technique to recognize ges-tures and estimate metric depth of hands fo...
In this paper we present a highly accurate algorithm for the detection of human hands in real-life 2...