Navigation is one of the most heavily studied problems in robotics and is conventionally approached as a geometric mapping and planning problem. However, real-world navigation presents a complex set of physical challenges that defies simple geometric abstractions. Machine learning offers a promising way to go beyond geometry and conventional planning, allowing for navigational systems that make decisions based on actual prior experience. Such systems can reason about traversability in ways that go beyond geometry, accounting for the physical outcomes of their actions and exploiting patterns in real-world environments. They can also improve as more data is collected, potentially providing a powerful network effect. In this article, we presen...
110 pagesAutonomous robotic navigation in unstructured, complex environments requires the robot to r...
International audienceThis paper addresses the design of a control law for vision-based robot naviga...
We consider the problem of robot path planning in initially unknown environments using machine learn...
Machine learning can offer an increase in the flexibility and applicability of robotics at several l...
It is extremely difficult to teach robots the skills that humans take for granted. Understanding the...
ABSTRACT { This paper presents a new method for mobile robot navigation in an un-known world. The pa...
If you want to do something, first you have to go somewhere. Navigation is a crucial capability for ...
Advancements in deep learning have catalyzed growth in robotic applications, extending their utility...
As roboticists, we look forward to the days in which robots will be ubiquitous in our lives. For rob...
In order to create mobile robots that can autonomously navigate real-world environments, we need gen...
I present my work on learning from video and robotic input. This is an important problem, with numer...
Providing mobile robots with the ability to manipulate objects has, despite decades of research, rem...
Machine learning is becoming very popular in many technological aspects worldwide, including robotic...
Navigating complex indoor environments requires a deep understanding of the space the robotic agent ...
The work conducted in this thesis contributes to the robotic navigation field by focusing on differe...
110 pagesAutonomous robotic navigation in unstructured, complex environments requires the robot to r...
International audienceThis paper addresses the design of a control law for vision-based robot naviga...
We consider the problem of robot path planning in initially unknown environments using machine learn...
Machine learning can offer an increase in the flexibility and applicability of robotics at several l...
It is extremely difficult to teach robots the skills that humans take for granted. Understanding the...
ABSTRACT { This paper presents a new method for mobile robot navigation in an un-known world. The pa...
If you want to do something, first you have to go somewhere. Navigation is a crucial capability for ...
Advancements in deep learning have catalyzed growth in robotic applications, extending their utility...
As roboticists, we look forward to the days in which robots will be ubiquitous in our lives. For rob...
In order to create mobile robots that can autonomously navigate real-world environments, we need gen...
I present my work on learning from video and robotic input. This is an important problem, with numer...
Providing mobile robots with the ability to manipulate objects has, despite decades of research, rem...
Machine learning is becoming very popular in many technological aspects worldwide, including robotic...
Navigating complex indoor environments requires a deep understanding of the space the robotic agent ...
The work conducted in this thesis contributes to the robotic navigation field by focusing on differe...
110 pagesAutonomous robotic navigation in unstructured, complex environments requires the robot to r...
International audienceThis paper addresses the design of a control law for vision-based robot naviga...
We consider the problem of robot path planning in initially unknown environments using machine learn...