This paper explores how to find, track, and learn models of arbitrary objects in a video without a predefined method for object detection. We present a model that localizes objects via unsupervised tracking while learning a representation of each object, avoiding the need for pre-built detectors. Our model uses a dependent Dirichlet process mixture to capture the uncertainty in the number and appearance of objects and requires only spatial and color video data that can be efficiently extracted via frame differencing. We give two inference algorithms for use in both online and offline settings, and use them to perform accurate detection-free tracking on multiple real videos. We demonstrate our method in difficult detection scenarios involvin...
Tracking objects of interest in video sequences, referred in computer vision literature as video tra...
This paper presents a novel approach for tracking multiple objects and a statistical learning approa...
We present a novel framework for learning patterns of motion and sizes of objects in static camera s...
This paper explores how to find, track, and learn models of arbitrary objects in a video without a p...
Abstract This paper proposes a technique for the un-supervised detection and tracking of arbitrary o...
In this paper we propose a novel framework for the detection and tracking in real-time of unknown ob...
We propose a novel method for keeping track of multiple objects in provided regions of interest, i.e...
This paper investigates long-term tracking of unknown objects in a video stream. The object is defin...
Visual tracking is the process of locating an object in a video sequence. This thesis investigates v...
This work investigates the problem of robust, longterm visual tracking of unknown objects in unconst...
One of the main challenges in video-based multi-target tracking is the consistent maintenance of obj...
We present a probabilistic framework for component-based automatic detection and tracking of object...
Abstract It is challenging to track a target continuously in videos with long-term occlusion, or obj...
We propose to model a tracked object in a video sequence by locating a list of object features that ...
Developing computer vision algorithms able to learn from unsegmented images containing multiple obje...
Tracking objects of interest in video sequences, referred in computer vision literature as video tra...
This paper presents a novel approach for tracking multiple objects and a statistical learning approa...
We present a novel framework for learning patterns of motion and sizes of objects in static camera s...
This paper explores how to find, track, and learn models of arbitrary objects in a video without a p...
Abstract This paper proposes a technique for the un-supervised detection and tracking of arbitrary o...
In this paper we propose a novel framework for the detection and tracking in real-time of unknown ob...
We propose a novel method for keeping track of multiple objects in provided regions of interest, i.e...
This paper investigates long-term tracking of unknown objects in a video stream. The object is defin...
Visual tracking is the process of locating an object in a video sequence. This thesis investigates v...
This work investigates the problem of robust, longterm visual tracking of unknown objects in unconst...
One of the main challenges in video-based multi-target tracking is the consistent maintenance of obj...
We present a probabilistic framework for component-based automatic detection and tracking of object...
Abstract It is challenging to track a target continuously in videos with long-term occlusion, or obj...
We propose to model a tracked object in a video sequence by locating a list of object features that ...
Developing computer vision algorithms able to learn from unsegmented images containing multiple obje...
Tracking objects of interest in video sequences, referred in computer vision literature as video tra...
This paper presents a novel approach for tracking multiple objects and a statistical learning approa...
We present a novel framework for learning patterns of motion and sizes of objects in static camera s...