This paper explores the idea of predicting the likely performance of a robot’s perception system based on past experience in the same workspace. In particular, we propose to build a place-specific model of perception performance from observations gathered over time.We evaluate our method in a classical decision making scenario in which the robot must choose when and where to drive autonomously in 60km of driving data from an urban environment. We demonstrate that leveraging visual appearance within a state-of-the-art navigation framework increases the accuracy of our performance predictions
Robots performing complex tasks in rich environments need very good perception modules in order to u...
This paper is about robots that autonomously learn how to interpret their environ-ment through use. ...
If robotic agents are to act autonomously they must have the ability to construct and reason about m...
This paper explores the idea of predicting the likely performance of a robot’s perception system bas...
Despite significant advances in machine learning and perception over the past few decades, perceptio...
Despite significant advances in machine learning and perception over the past few decades, perceptio...
Perception systems are often the core component of a robotics framework as their ability to accurat...
The paper presents a biologically-inspired perception-action scheme for robots interacting with real...
Human impressions of robot performance are often measured through surveys. As a more scalable and co...
The global autonomous robot market is expected to be worth more than eleven billion US dollars by 20...
Abstract — This paper is a demonstration of how a robot can, through introspection and then targeted...
Perception algorithms that provide estimates of their uncertainty are crucial to the development of ...
Robots performing complex tasks in rich environments need very good perception modules in order to u...
Agents that operate in a real-world environment have to process an abundance of information, which m...
Robots performing complex tasks in rich environments need very good perception modules in order to u...
Robots performing complex tasks in rich environments need very good perception modules in order to u...
This paper is about robots that autonomously learn how to interpret their environ-ment through use. ...
If robotic agents are to act autonomously they must have the ability to construct and reason about m...
This paper explores the idea of predicting the likely performance of a robot’s perception system bas...
Despite significant advances in machine learning and perception over the past few decades, perceptio...
Despite significant advances in machine learning and perception over the past few decades, perceptio...
Perception systems are often the core component of a robotics framework as their ability to accurat...
The paper presents a biologically-inspired perception-action scheme for robots interacting with real...
Human impressions of robot performance are often measured through surveys. As a more scalable and co...
The global autonomous robot market is expected to be worth more than eleven billion US dollars by 20...
Abstract — This paper is a demonstration of how a robot can, through introspection and then targeted...
Perception algorithms that provide estimates of their uncertainty are crucial to the development of ...
Robots performing complex tasks in rich environments need very good perception modules in order to u...
Agents that operate in a real-world environment have to process an abundance of information, which m...
Robots performing complex tasks in rich environments need very good perception modules in order to u...
Robots performing complex tasks in rich environments need very good perception modules in order to u...
This paper is about robots that autonomously learn how to interpret their environ-ment through use. ...
If robotic agents are to act autonomously they must have the ability to construct and reason about m...