The goal of this research is to model an ``activity" performed by a group of moving and interacting objects (which can be people or cars or robots or different rigid components of the human body) and use these models for abnormal activity detection, tracking and segmentation. Previous approaches to modeling group activity include co-occurrence statistics (individual and joint histograms) and Dynamic Bayesian Networks, neither of which is applicable when the number of interacting objects is large. We treat the objects as point objects (referred to as ``landmarks'') and propose to model their changing configuration as a moving and deforming ``shape" using ideas from Kendall's shape theory for discrete landmarks. A continuous state ...
Statistics on shape manifolds. In this work we perform human identification by gait recognition wher...
In recent years there has been an increased interest in the modelling and recognition of human activ...
International audienceWe present a novel approach to modelling the non-linear and time-varying dynam...
The aim is to model "activity" performed by a group of moving and interacting objects (whi...
This thesis addresses the problem of learning the dynamics of deforming objects in image time series...
Abstract. Activity recognition consists of two fundamental tasks: tracking the features/objects of i...
Shape, Appearance and Motion are the most important cues for analyzing human movements in visual sur...
This paper presents a new statistical model for detecting and tracking deformable objects such as pe...
Classical applications of Pattern recognition in image processing and computer vision have typically...
Shape, Appearance and Motion are the most important cues for analyzing human movements in visual sur...
Human activities are characterised by the spatio-temporal structure of their motion patterns. Such s...
This paper presents a new approach to trajectory-based abnormal behavior detection (ABD). While exis...
Non-linear statistical models of deformation provide methods to learn a priori shape and deformation...
Activity recognition from video data is a key computer vision problem with applications in surveilla...
This paper proposes a sliding window approach, whose length and time shift are dynamically adaptable...
Statistics on shape manifolds. In this work we perform human identification by gait recognition wher...
In recent years there has been an increased interest in the modelling and recognition of human activ...
International audienceWe present a novel approach to modelling the non-linear and time-varying dynam...
The aim is to model "activity" performed by a group of moving and interacting objects (whi...
This thesis addresses the problem of learning the dynamics of deforming objects in image time series...
Abstract. Activity recognition consists of two fundamental tasks: tracking the features/objects of i...
Shape, Appearance and Motion are the most important cues for analyzing human movements in visual sur...
This paper presents a new statistical model for detecting and tracking deformable objects such as pe...
Classical applications of Pattern recognition in image processing and computer vision have typically...
Shape, Appearance and Motion are the most important cues for analyzing human movements in visual sur...
Human activities are characterised by the spatio-temporal structure of their motion patterns. Such s...
This paper presents a new approach to trajectory-based abnormal behavior detection (ABD). While exis...
Non-linear statistical models of deformation provide methods to learn a priori shape and deformation...
Activity recognition from video data is a key computer vision problem with applications in surveilla...
This paper proposes a sliding window approach, whose length and time shift are dynamically adaptable...
Statistics on shape manifolds. In this work we perform human identification by gait recognition wher...
In recent years there has been an increased interest in the modelling and recognition of human activ...
International audienceWe present a novel approach to modelling the non-linear and time-varying dynam...