Adynamic texture is a spatio-temporal generative model for video, which represents video sequences as observations from a linear dynamical system. This work studies the mixture of dynamic textures, a statistical model for an ensemble of video sequences that is sampled from a finite collection of visual processes, each of which is a dynamic texture. An expectation-maximization (EM) algorithm is derived for learning the parameters of the model, and the model is related to previous works in linear systems, machine learning, time-series clustering, control theory, and computer vision. Through experimentation, it is shown that the mixture of dynamic textures is a suitable representation for both the appearance and dynamics of a variety of visual...
We address the problem of modeling the spatial and temporal second-order statistics of video sequenc...
Dynamic textures are sequences of images of moving scenes that exhibit certain stationariety proper-...
International audienceWe propose to tackle dynamic texture video classification as a pattern mining ...
Abstract — A dynamic texture is a spatio-temporal generative model for video, which represents video...
One family of visual processes that has relevance for various applications of computer vision is tha...
A dynamic texture is a video model that treats a video as a sample from a spatio-temporal stochastic...
This paper addresses the segmentation of videos with arbitrary motion, including dynamic textures, u...
The aim of this work is to model, learn and recognize, dynamic contents in video sequences, displaye...
We consider the problem of modeling a scene containing multiple dynamic textures undergoing multiple...
Temporal or dynamic textures are video sequences that are spatially repetitive and temporally statio...
We present a novel method for the discovery and statistical representation of motion patterns in a s...
International audienceA motion texture is an instantaneous motion map extracted from a dynamic textu...
Dynamic textures are time-varying visual patterns that exhibit certain spatio-temporal stationarity ...
Dynamic textures are sequences of images of moving scenes that exhibit certain stationarity properti...
Dynamic textures are sequences of images of moving scenes that exhibit certain stationarity properti...
We address the problem of modeling the spatial and temporal second-order statistics of video sequenc...
Dynamic textures are sequences of images of moving scenes that exhibit certain stationariety proper-...
International audienceWe propose to tackle dynamic texture video classification as a pattern mining ...
Abstract — A dynamic texture is a spatio-temporal generative model for video, which represents video...
One family of visual processes that has relevance for various applications of computer vision is tha...
A dynamic texture is a video model that treats a video as a sample from a spatio-temporal stochastic...
This paper addresses the segmentation of videos with arbitrary motion, including dynamic textures, u...
The aim of this work is to model, learn and recognize, dynamic contents in video sequences, displaye...
We consider the problem of modeling a scene containing multiple dynamic textures undergoing multiple...
Temporal or dynamic textures are video sequences that are spatially repetitive and temporally statio...
We present a novel method for the discovery and statistical representation of motion patterns in a s...
International audienceA motion texture is an instantaneous motion map extracted from a dynamic textu...
Dynamic textures are time-varying visual patterns that exhibit certain spatio-temporal stationarity ...
Dynamic textures are sequences of images of moving scenes that exhibit certain stationarity properti...
Dynamic textures are sequences of images of moving scenes that exhibit certain stationarity properti...
We address the problem of modeling the spatial and temporal second-order statistics of video sequenc...
Dynamic textures are sequences of images of moving scenes that exhibit certain stationariety proper-...
International audienceWe propose to tackle dynamic texture video classification as a pattern mining ...