This paper presents a novel approach for tracking static and dynamic objects for an autonomous vehicle operating in complex urban environments. Whereas traditional approaches for tracking often feature numerous hand-engineered stages, this method is learned end-to-end and can directly predict a fully unoccluded occupancy grid from raw laser input. We employ a recurrent neural network to capture the state and evolution of the environment, and train the model in an entirely unsupervised manner. In doing so, our use case compares to model-free, multi-object tracking although we do not explicitly perform the underlying data-association process. Further, we demonstrate that the underlying representation learned for the tracking task can be lever...
In this paper, we introduce the so-called DEEP-SEE framework that jointly exploits computer vision a...
In this thesis, the aim is to examine the viability of Deep Neural Network (DNN) based Multi-Object...
Object tracking is a challenging problem in many computer vision applications, which go from robotic...
This paper presents a novel approach for tracking static and dynamic objects for an autonomous vehic...
This paper presents to the best of our knowledge the first end-to-end object tracking approach which...
In this work we present a novel end-to-end framework for tracking and classifying a robot’s surround...
Autonomous robots act in a \emph{dynamic} world where both the robots and other objects may move. Th...
We consider the special case of tracking objects in highly structured scenes. In the context of vehi...
Accurate vehicle classification and tracking are increasingly important subjects for intelligent tra...
Modeling and understanding the environment is an essential task for autonomous driving. In addition ...
The development of machine learning and the prosperity of the convolution neural network has brought...
Abstract It is challenging to track a target continuously in videos with long-term occlusion, or obj...
In this paper, we study the challenging problem of tracking the trajectory of a moving object in a v...
© 2017 IEEE. Robust visual tracking for outdoor vehicle is still a challenging problem due to large ...
A common approach for modeling the environment of an autonomous vehicle are dynamic occupancy grid m...
In this paper, we introduce the so-called DEEP-SEE framework that jointly exploits computer vision a...
In this thesis, the aim is to examine the viability of Deep Neural Network (DNN) based Multi-Object...
Object tracking is a challenging problem in many computer vision applications, which go from robotic...
This paper presents a novel approach for tracking static and dynamic objects for an autonomous vehic...
This paper presents to the best of our knowledge the first end-to-end object tracking approach which...
In this work we present a novel end-to-end framework for tracking and classifying a robot’s surround...
Autonomous robots act in a \emph{dynamic} world where both the robots and other objects may move. Th...
We consider the special case of tracking objects in highly structured scenes. In the context of vehi...
Accurate vehicle classification and tracking are increasingly important subjects for intelligent tra...
Modeling and understanding the environment is an essential task for autonomous driving. In addition ...
The development of machine learning and the prosperity of the convolution neural network has brought...
Abstract It is challenging to track a target continuously in videos with long-term occlusion, or obj...
In this paper, we study the challenging problem of tracking the trajectory of a moving object in a v...
© 2017 IEEE. Robust visual tracking for outdoor vehicle is still a challenging problem due to large ...
A common approach for modeling the environment of an autonomous vehicle are dynamic occupancy grid m...
In this paper, we introduce the so-called DEEP-SEE framework that jointly exploits computer vision a...
In this thesis, the aim is to examine the viability of Deep Neural Network (DNN) based Multi-Object...
Object tracking is a challenging problem in many computer vision applications, which go from robotic...