In recent times, the field of computer vision has made great progress with recognizing and tracking people and their activities in videos. However, for systems designed to interact dynamically with humans, tracking and recognition are insufficient; the ability to predict behavior is requisite. In this thesis, we introduce various general frameworks for predict human behavior at three levels of granularity: events, motion, and dynamics. In Chapter 2, we present a system that is capable of predicting future events. In Chapter 3, we present a system that is capable of personalized prediction of the future motion of multi-agent, adversarial interactions. Finally, in Chapter 4, we present a framework for learning a representation of human dynami...
The textual description of video sequences exploits conceptual knowledge about the behavior of depi...
In this dissertation, we address the problem of understanding human activities in videos by developi...
We develop predictive models of pedestrian dynamics by encoding the coupled nature of multi-pedestri...
Human activity recognition (HAR) has become one of the most active research topics in image processi...
Computer vision is gradually making the transition from image understanding to video understanding. ...
Computer vision is gradually making the transition from image understanding to video understanding. ...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
This thesis addresses the problem of understanding human behaviour in videos in multiple problem set...
Human behaviour recognition has been, and still remains, a challenging problem that involves differe...
In order to effectively respond to and influence the world they inhabit, animals and other intellige...
In order to effectively respond to and influence the world they inhabit, animals and other intellige...
International audienceWe introduce an approach for learning human actions as interactions between pe...
Following the gaze of people inside videos is an important signal for understanding people and their...
We present methods for learning and tracking human motion in video. We estimate a statistical model...
We used a novel stimulus set of human and robot actions to explore the role of humanlike appearance ...
The textual description of video sequences exploits conceptual knowledge about the behavior of depi...
In this dissertation, we address the problem of understanding human activities in videos by developi...
We develop predictive models of pedestrian dynamics by encoding the coupled nature of multi-pedestri...
Human activity recognition (HAR) has become one of the most active research topics in image processi...
Computer vision is gradually making the transition from image understanding to video understanding. ...
Computer vision is gradually making the transition from image understanding to video understanding. ...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
This thesis addresses the problem of understanding human behaviour in videos in multiple problem set...
Human behaviour recognition has been, and still remains, a challenging problem that involves differe...
In order to effectively respond to and influence the world they inhabit, animals and other intellige...
In order to effectively respond to and influence the world they inhabit, animals and other intellige...
International audienceWe introduce an approach for learning human actions as interactions between pe...
Following the gaze of people inside videos is an important signal for understanding people and their...
We present methods for learning and tracking human motion in video. We estimate a statistical model...
We used a novel stimulus set of human and robot actions to explore the role of humanlike appearance ...
The textual description of video sequences exploits conceptual knowledge about the behavior of depi...
In this dissertation, we address the problem of understanding human activities in videos by developi...
We develop predictive models of pedestrian dynamics by encoding the coupled nature of multi-pedestri...