Autonomous agile flight brings up fundamental challenges in robotics, such as coping with unreliable state estimation, reacting optimally to dynamically changing environments, and coupling perception and action in real time under severe resource constraints. In this paper, we consider these challenges in the context of autonomous, vision-based drone racing in dynamic environments. Our approach combines a convolutional neural network (CNN) with a state-of-the-art path-planning and control system. The CNN directly maps raw images into a robust representation in the form of a waypoint and desired speed. This information is then used by the planner to generate a short, minimum-jerk trajectory segment and corresponding motor commands to reach th...
Despite impressive results in visual-inertial state estimation in recent years, high speed trajector...
Civilian drones are soon expected to be used in a wide variety of tasks, such as aerial surveillance...
In this extended abstract, we present our latest research in learning deep sensorimotor policies for...
Autonomous agile flight brings up fundamental challenges in robotics, such as coping with unreliable...
Dynamically changing environments, unreliable state estimation, and operation under severe resource ...
Dynamically changing environments, unreliable state estimation, and operation under severe resource ...
Autonomous drones can operate in remote and unstructured environments, enabling various real-world a...
Autonomous micro aerial vehicles still struggle with fast and agile maneuvers, dynamic environments,...
This paper presents a novel system for autonomous, vision-based drone racing combining learned data ...
This paper presents a novel system for autonomous,vision-based drone racing combining learned d...
Robotics is the next frontier in the progress of Artificial Intelligence (AI), as the real world in ...
Lightweight, autonomous drones are soon expected to be used in a wide variety of tasks such as aeria...
Humans race drones faster than algorithms, despite being limited to a fixed camera angle, body rate ...
Nowadays, Unmanned Aerial Vehicles (UAVs)are becoming increasingly popular facilitated by their exte...
We propose an extension of a recent work using convo-lutional neural networks and drones, such as Le...
Despite impressive results in visual-inertial state estimation in recent years, high speed trajector...
Civilian drones are soon expected to be used in a wide variety of tasks, such as aerial surveillance...
In this extended abstract, we present our latest research in learning deep sensorimotor policies for...
Autonomous agile flight brings up fundamental challenges in robotics, such as coping with unreliable...
Dynamically changing environments, unreliable state estimation, and operation under severe resource ...
Dynamically changing environments, unreliable state estimation, and operation under severe resource ...
Autonomous drones can operate in remote and unstructured environments, enabling various real-world a...
Autonomous micro aerial vehicles still struggle with fast and agile maneuvers, dynamic environments,...
This paper presents a novel system for autonomous, vision-based drone racing combining learned data ...
This paper presents a novel system for autonomous,vision-based drone racing combining learned d...
Robotics is the next frontier in the progress of Artificial Intelligence (AI), as the real world in ...
Lightweight, autonomous drones are soon expected to be used in a wide variety of tasks such as aeria...
Humans race drones faster than algorithms, despite being limited to a fixed camera angle, body rate ...
Nowadays, Unmanned Aerial Vehicles (UAVs)are becoming increasingly popular facilitated by their exte...
We propose an extension of a recent work using convo-lutional neural networks and drones, such as Le...
Despite impressive results in visual-inertial state estimation in recent years, high speed trajector...
Civilian drones are soon expected to be used in a wide variety of tasks, such as aerial surveillance...
In this extended abstract, we present our latest research in learning deep sensorimotor policies for...