We present a new method for multi-agent activity analysis and recognition that uses low level motion features and exploits the inherent structure and recurrence of motion present in multi-agent activity scenarios. Our representation is inspired by the need to circumvent the difficult problem of tracking in multi-agent scenarios and the observation that for many visual multi-agent recognition tasks, the spatiotemporal description of events irrespective of agent identity is sufficient for activity classification. We begin by learning generative models describing motion induced by individual actors or groups, which are considered to be agents. These models are Gaussian mixture distributions learned by linking clusters of optical flow to obtain...
Activity analysis in which multiple people interact across a large space is challenging due to the i...
Thesis (Ph.D.)--Massachusetts Institute of Technology, School of Architecture and Planning, Program ...
Recent research has shown that surprisingly rich models of human behavior can be learned from GPS (p...
We present a new method for multi-agent activity analysis and recognition that uses low level motion...
We present a new method for multi-agent activity analysis and recognition that uses low level motion...
The numerous surveillance videos recorded by a single stationary wide-angle-view camera persuade the...
Multi-person action recognition requires models of structured interaction be-tween people and object...
This article addresses the problem of activity recognition for dynamic, physically embodied agent te...
The world that we live in is a complex network of agents and their interactions which are termed as ...
This article addresses the problem of activity recognition for dynamic, physically embodied agent te...
In this paper, we model multi-agent events in terms of a temporally varying sequence of sub-events, ...
The world that we live in is a complex network of agents and their interactions which are termed as ...
AbstractThis paper presents the novel theory for performing multi-agent activity recognition without...
In this paper, we model multi-agent events in terms of a temporally varying sequence of sub-events, ...
AbstractIn this paper, we model multi-agent events in terms of a temporally varying sequence of sub-...
Activity analysis in which multiple people interact across a large space is challenging due to the i...
Thesis (Ph.D.)--Massachusetts Institute of Technology, School of Architecture and Planning, Program ...
Recent research has shown that surprisingly rich models of human behavior can be learned from GPS (p...
We present a new method for multi-agent activity analysis and recognition that uses low level motion...
We present a new method for multi-agent activity analysis and recognition that uses low level motion...
The numerous surveillance videos recorded by a single stationary wide-angle-view camera persuade the...
Multi-person action recognition requires models of structured interaction be-tween people and object...
This article addresses the problem of activity recognition for dynamic, physically embodied agent te...
The world that we live in is a complex network of agents and their interactions which are termed as ...
This article addresses the problem of activity recognition for dynamic, physically embodied agent te...
In this paper, we model multi-agent events in terms of a temporally varying sequence of sub-events, ...
The world that we live in is a complex network of agents and their interactions which are termed as ...
AbstractThis paper presents the novel theory for performing multi-agent activity recognition without...
In this paper, we model multi-agent events in terms of a temporally varying sequence of sub-events, ...
AbstractIn this paper, we model multi-agent events in terms of a temporally varying sequence of sub-...
Activity analysis in which multiple people interact across a large space is challenging due to the i...
Thesis (Ph.D.)--Massachusetts Institute of Technology, School of Architecture and Planning, Program ...
Recent research has shown that surprisingly rich models of human behavior can be learned from GPS (p...