Perception algorithms that provide estimates of their uncertainty are crucial to the development of autonomous robots that can operate in challenging and uncontrolled environments. Such perception algorithms provide the means for having risk-aware robots that reason about the probability of successfully completing a task when planning. There exist perception algorithms that come with models of their uncertainty; however, these models are often developed with assumptions, such as perfect data associations, that do not hold in the real world. Hence the resultant estimated uncertainty is a weak lower bound. To tackle this problem, we present introspective perception -- a novel approach for predicting accurate estimates of the uncertainty of p...
The final publication is available at www.springerlink.comIn this work we present a control strategy...
We consider how a robot may interpret its sensors and direct its actions so aa to gain more informat...
Robots must perform tasks efficiently and reli- ably while acting under uncertainty. One way to achi...
Perception systems are often the core component of a robotics framework as their ability to accurat...
My research aims to enable spatiotemporal inference in mobile robot perception systems. Specifically...
Despite significant advances in machine learning and perception over the past few decades, perceptio...
In robotics, a classifier is often a core component of the decision-making framework. Precision and ...
Despite significant advances in machine learning and perception over the past few decades, perceptio...
Recent advances in artificial intelligence, particularly deep learning and large foundation models, ...
With the advent of autonomous systems, machine perception is a decisive safety-critical part to make...
To autonomously perform tasks, a robot should continually perceive the state of its environment, rea...
Robots are increasingly expected to go beyond controlled environments in laboratories and factories,...
Robots are increasingly expected to go beyond controlled environments in laboratories and factories,...
In this paper, we give a double twist to the problem of planning under uncertainty. State-of-the-art...
The global autonomous robot market is expected to be worth more than eleven billion US dollars by 20...
The final publication is available at www.springerlink.comIn this work we present a control strategy...
We consider how a robot may interpret its sensors and direct its actions so aa to gain more informat...
Robots must perform tasks efficiently and reli- ably while acting under uncertainty. One way to achi...
Perception systems are often the core component of a robotics framework as their ability to accurat...
My research aims to enable spatiotemporal inference in mobile robot perception systems. Specifically...
Despite significant advances in machine learning and perception over the past few decades, perceptio...
In robotics, a classifier is often a core component of the decision-making framework. Precision and ...
Despite significant advances in machine learning and perception over the past few decades, perceptio...
Recent advances in artificial intelligence, particularly deep learning and large foundation models, ...
With the advent of autonomous systems, machine perception is a decisive safety-critical part to make...
To autonomously perform tasks, a robot should continually perceive the state of its environment, rea...
Robots are increasingly expected to go beyond controlled environments in laboratories and factories,...
Robots are increasingly expected to go beyond controlled environments in laboratories and factories,...
In this paper, we give a double twist to the problem of planning under uncertainty. State-of-the-art...
The global autonomous robot market is expected to be worth more than eleven billion US dollars by 20...
The final publication is available at www.springerlink.comIn this work we present a control strategy...
We consider how a robot may interpret its sensors and direct its actions so aa to gain more informat...
Robots must perform tasks efficiently and reli- ably while acting under uncertainty. One way to achi...