Abstract—We propose that the dynamics of an action in video data forms a sparse self-similar manifold in the space-time volume, which can be fully characterized by a linear rank decomposition. Inspired by the recurrence plot theory, we introduce the concept of Joint Self-Similarity Volume (Joint-SSV for short) to model this sparse action manifold, and hence propose a new optimized rank-1 tensor approximation of the Joint-SSV to obtain compact low-dimensional descriptors that very accurately characterize an action in a video sequence. We show that these descriptor vectors make it possible to recognize actions without explicitly aligning the videos in time in order to compensate for speed of execution or differences in video frame rates. More...
International audienceThis paper addresses recognition of human actions under view changes. We explo...
Human action recognition is a challenging problem in Computer Vision which has many potential appli...
This paper concerns recognition of human actions under view changes. We explore self-similarities of...
We propose that the dynamics of an action in video data forms a sparse self-similar manifold in the ...
We propose that the dynamics of an action in video data forms a sparse self-similar manifold in the ...
In this paper, we make three main contributions in the area of action recognition: (i) We introduce ...
This thesis consists of 4 major parts. In the first part (Chapters 1-2), we introduce the overview, ...
Spatio-temporal convolution often fails to learn motion dynamics in videos and thus an effective mot...
Recognizing actions is one of the important challenges in computer vision with respect to video data...
This paper proposes a novel framework that allows for a flexible and an efficient motion capture dat...
This paper proposes a novel framework that allows for a flexible and an efficient retrieval of motio...
The objective of vision-based human action recognition is to label the video sequence with its corre...
The automatic analysis of video sequences with individuals performing some actions is currently rec...
In this paper, we learn explicit representations for dynamic shape manifolds of moving humans for th...
Abstract—This paper addresses recognition of human actions under view changes. We explore self-simil...
International audienceThis paper addresses recognition of human actions under view changes. We explo...
Human action recognition is a challenging problem in Computer Vision which has many potential appli...
This paper concerns recognition of human actions under view changes. We explore self-similarities of...
We propose that the dynamics of an action in video data forms a sparse self-similar manifold in the ...
We propose that the dynamics of an action in video data forms a sparse self-similar manifold in the ...
In this paper, we make three main contributions in the area of action recognition: (i) We introduce ...
This thesis consists of 4 major parts. In the first part (Chapters 1-2), we introduce the overview, ...
Spatio-temporal convolution often fails to learn motion dynamics in videos and thus an effective mot...
Recognizing actions is one of the important challenges in computer vision with respect to video data...
This paper proposes a novel framework that allows for a flexible and an efficient motion capture dat...
This paper proposes a novel framework that allows for a flexible and an efficient retrieval of motio...
The objective of vision-based human action recognition is to label the video sequence with its corre...
The automatic analysis of video sequences with individuals performing some actions is currently rec...
In this paper, we learn explicit representations for dynamic shape manifolds of moving humans for th...
Abstract—This paper addresses recognition of human actions under view changes. We explore self-simil...
International audienceThis paper addresses recognition of human actions under view changes. We explo...
Human action recognition is a challenging problem in Computer Vision which has many potential appli...
This paper concerns recognition of human actions under view changes. We explore self-similarities of...