The ability to detect and track objects in the visual world is a crucial skill for any intelligent agent, as it is a necessary precursor to any object-level reasoning process. Moreover, it is important that agents learn to track objects without supervision (i.e. without access to annotated training videos) since this will allow agents to begin operating in new environments with minimal human assistance. The task of learning to discover and track objects in videos, which we call unsupervised object tracking, has grown in prominence in recent years; however, most architectures that address it still struggle to deal with large scenes containing many objects. In the current work, we propose an architecture that scales well to the large-scene, m...
[EMBARGOED UNTIL 6/1/2023] Moving object tracking is a fundamental computer vision task with a wide ...
The study of object representations in computer vision has primarily focused on developing represent...
Graduation date: 2017This thesis focuses on the problem of object tracking. Given a video, the gener...
The ability to detect and track objects in the visual world is a crucial skill for any intelligent a...
There are many reasons to expect an ability to reason in terms of objects to be a crucial skill for ...
This paper presents a scaleable solution to the problem of tracking objects across spatially separat...
We pose video colorization as a self-supervised learning problem for visual tracking. We use large a...
This paper explores how to find, track, and learn models of arbitrary objects in a video without a p...
Abstract—In this paper, we present the ALIEN tracking method that exploits oversampling of local inv...
International audienceThis paper addresses the problem of automatically localizing dominant objects ...
The power of deep neural networks comes mainly from huge labeled datasets. Even though it shines on ...
Class-agnostic object tracking is particularly difficult in cluttered environments as target specifi...
A great challenge in tracking multiple objects is how to locate each object when they interact and f...
Object tracking is a challenging task in many computer vision applications due to occlusion, scale v...
We describe a new family of algorithms that analyze time-varying scenes, recognizing and tracking le...
[EMBARGOED UNTIL 6/1/2023] Moving object tracking is a fundamental computer vision task with a wide ...
The study of object representations in computer vision has primarily focused on developing represent...
Graduation date: 2017This thesis focuses on the problem of object tracking. Given a video, the gener...
The ability to detect and track objects in the visual world is a crucial skill for any intelligent a...
There are many reasons to expect an ability to reason in terms of objects to be a crucial skill for ...
This paper presents a scaleable solution to the problem of tracking objects across spatially separat...
We pose video colorization as a self-supervised learning problem for visual tracking. We use large a...
This paper explores how to find, track, and learn models of arbitrary objects in a video without a p...
Abstract—In this paper, we present the ALIEN tracking method that exploits oversampling of local inv...
International audienceThis paper addresses the problem of automatically localizing dominant objects ...
The power of deep neural networks comes mainly from huge labeled datasets. Even though it shines on ...
Class-agnostic object tracking is particularly difficult in cluttered environments as target specifi...
A great challenge in tracking multiple objects is how to locate each object when they interact and f...
Object tracking is a challenging task in many computer vision applications due to occlusion, scale v...
We describe a new family of algorithms that analyze time-varying scenes, recognizing and tracking le...
[EMBARGOED UNTIL 6/1/2023] Moving object tracking is a fundamental computer vision task with a wide ...
The study of object representations in computer vision has primarily focused on developing represent...
Graduation date: 2017This thesis focuses on the problem of object tracking. Given a video, the gener...