We study a visual-inertial navigation (VIN) problem in which a robot needs to estimate its state using an on-board camera and an inertial sensor, without any prior knowledge of the external environment. We consider the case in which the robot can allocate limited resources to VIN, due to tight computational constraints. Therefore, we answer the following question: under limited resources, what are the most relevant visual cues to maximize the performance of VIN? Our approach has four key ingredients. First, it is task-driven, in that the selection of the visual cues is guided by a metric quantifying the VIN performance. Second, it exploits the notion of anticipation, since it uses a simplified model for forward-simulation of robot dynamics,...
Computer vision research aimed at performing general scene understanding has proven to be conceptual...
Despite impressive results in visual-inertial state estimation in recent years, high speed trajector...
Robots require a form of visual attention to perform a wide range of tasks effectively. Existing app...
Visual attention is the cognitive process that allows humans to parse a large amount of sensory data...
In spite of extensive consumer interest in domains such as autonomous driving, general purpose visua...
Autonomous micro aerial vehicles (MAVs) are becoming an integral tool in numerous applications invol...
Thesis (Ph. D.)--Joint Program in Applied Ocean Science and Engineering (Massachusetts Institute of ...
We study a problem in vision-aided navigation in which an autonomous agent has to traverse a specifi...
Accurate and reliable state estimation is essential for safe mobile robot operation in real world en...
In this work, we focus on the problem of pose estimation in unknown environments, using the measurem...
In this letter, we study the effects that perception latency has on the maximum speed a robot can re...
State estimation is an essential part of intelligent navigation and mapping systems where tracking t...
We propose a novel, vision-based method for robot homing, the problem of computing a route so that a...
Humans race drones faster than neural networks trained for end-to-end autonomous flight. This may be...
This work addresses the problem of generating a motion strategy for solving a visibility-based task ...
Computer vision research aimed at performing general scene understanding has proven to be conceptual...
Despite impressive results in visual-inertial state estimation in recent years, high speed trajector...
Robots require a form of visual attention to perform a wide range of tasks effectively. Existing app...
Visual attention is the cognitive process that allows humans to parse a large amount of sensory data...
In spite of extensive consumer interest in domains such as autonomous driving, general purpose visua...
Autonomous micro aerial vehicles (MAVs) are becoming an integral tool in numerous applications invol...
Thesis (Ph. D.)--Joint Program in Applied Ocean Science and Engineering (Massachusetts Institute of ...
We study a problem in vision-aided navigation in which an autonomous agent has to traverse a specifi...
Accurate and reliable state estimation is essential for safe mobile robot operation in real world en...
In this work, we focus on the problem of pose estimation in unknown environments, using the measurem...
In this letter, we study the effects that perception latency has on the maximum speed a robot can re...
State estimation is an essential part of intelligent navigation and mapping systems where tracking t...
We propose a novel, vision-based method for robot homing, the problem of computing a route so that a...
Humans race drones faster than neural networks trained for end-to-end autonomous flight. This may be...
This work addresses the problem of generating a motion strategy for solving a visibility-based task ...
Computer vision research aimed at performing general scene understanding has proven to be conceptual...
Despite impressive results in visual-inertial state estimation in recent years, high speed trajector...
Robots require a form of visual attention to perform a wide range of tasks effectively. Existing app...