
A drone flying through smoke to visualize the complex aerodynamic effects. (Image: Robotics and Perception Group, UZH)
For the first time an autonomously flying quadrotor has outperformed two human pilots in a drone race. The success is based on a novel algorithm that was developed by researchers of the University of Zurich. It calculates time-optimal trajectories that fully consider the drones’ limitations.
To be useful, drones need to be quick. Because of their limited battery life they must complete whatever task they have – searching for survivors on a disaster site, inspecting a building, delivering cargo – in the shortest possible time. And they may have to do it by going through a series of waypoints like windows, rooms, or specific locations to inspect, adopting the best trajectory and the right acceleration or deceleration at each segment.
Algorithm outperforms professional pilots
The best human drone pilots are very good at doing this and have so far always outperformed autonomous systems in drone racing. Now, a research group at the University of Zurich (UZH) has created an algorithm that can find the quickest trajectory to guide a quadrotor – a drone with four propellers – through a series of waypoints on a circuit. “Our drone beat the fastest lap of two world-class human pilots on an experimental race track”, says Davide Scaramuzza, who heads the Robotics and Perception Group at UZH and the Rescue Robotics Grand Challenge of the NCCR Robotics, which funded the research.
“The novelty of the algorithm is that it is the first to generate time-optimal trajectories that fully consider the drones’ limitations”, says Scaramuzza. Previous works relied on simplifications of either the quadrotor system or the description of the flight path, and thus they were sub-optimal. “The key idea is, rather than assigning sections of the flight path to specific waypoints, that our algorithm just tells the drone to pass through all waypoints, but not how or when to do that”, adds Philipp Foehn, PhD student and first author of the paper.
External cameras provide position information in real-time
The researchers had the algorithm and two human pilots fly the same quadrotor through a race circuit. They employed external cameras to precisely capture the motion of the drones and – in the case of the autonomous drone – to give real-time information to the algorithm on where the drone was at any moment. To ensure a fair comparison, the human pilots were given the opportunity to train on the circuit before the race. But the algorithm won: all its laps were faster than the human ones, and the performance was more consistent. This is not surprising, because once the algorithm has found the best trajectory it can reproduce it faithfully many times, unlike human pilots.
Before commercial applications, the algorithm will need to become less computationally demanding, as it now takes up to an hour for the computer to calculate the time-optimal trajectory for the drone. Also, at the moment, the drone relies on external cameras to compute where it was at any moment. In future work, the scientists want to use onboard cameras. But the demonstration that an autonomous drone can in principle fly faster than human pilots is promising. “This algorithm can have huge applications in package delivery with drones, inspection, search and rescue, and more”, says Scaramuzza.
Original Article: New Algorithm Flies Drones Faster than Human Racing Pilots
More from: University of Zurich
The Latest Updates from Bing News & Google News
Go deeper with Bing News on:
Autonomously flying quadrotor
- Kinect-controlled Quadrotor
The team over at the Flying Machine Arena has been busy combining ... mapping a handful of actions to the operator’s movements. Once the quadrotor is aloft, it can be directed around the room ...
- Chocolate Quadrotor Proves You Can Make Anything Fly
Introducing the first edible quadrotor! [Michael] enjoys building and flying quadrotors. His girlfriend enjoys baking and making chocolates. One day she had a crazy idea — what if they made a ...
- The Terrifying Bird Drones Flying Around Without A Need For Power
Remarkable birds like the Condor have elevated flying into an art ... it adapts to the environment and changes its position autonomously,” lead author of the yet-to-be-peer-reviewed study ...
- Keeping Healthy While Flying
The only thing separating many travelers from their energy-sapping work environment and that longed-for annual restorative vacation is an airplane ride. But if they haven't prepared well, that ...
- Southern Flying Squirrel
A furred membrane (patagium) extending between the wrists of the front feet and the ankles of the hind feet distinguish both species of flying squirrels inhabiting the Adirondacks. Flying squirrels ...
Go deeper with Google Headlines on:
Autonomously flying quadrotor
[google_news title=”” keyword=”autonomously flying quadrotor” num_posts=”5″ blurb_length=”0″ show_thumb=”left”]
Go deeper with Bing News on:
Machine-learning algorithm
- Data Science and Machine Learning Platforms Market Size to Reach USD 466.3 Billion by 2032 | CAGR: 17.4% | DataHorizzon Research
Published a report titled, "Data Science and Machine Learning Platforms Market Size, Growth, Share, Statistics Report, By Component (Platform, Services, Consulting, others), By Deployment Mode ...
- Early autism diagnosis breakthrough: machine learning uses eye movements on real and artificial faces
In conjunction with machine learning algorithms, Eye-tracking has emerged as a critical tool for early screening and diagnosis. Studies reveal that in ASD patients, gaze to stimuli with significant ...
- 10 Machine Learning Blueprints You Should Know for Cybersecurity | FREE download0 0
This book will prepare machine learning practitioners to effectively handle tasks in the challenging yet exciting cybersecurity space. The book begins by helping you understand how advanced ML ...
- New Machine Learning Technique Gives Virtual Drug Screening a Boost
Scientists using machine learning tools to analyze biomedical data often turn to neural network algorithms, but before these models became popular, another simpler type of machine learning algorithm ...
- 2023 Machine Learning Recommendation Algorithm Market Updates: Size and Share Insights and Future Trends by 2030
What is Market Insights and Analysis? The report highlighting both macro and microeconomic indicators is paramount, providing a balanced view of growth prospects and challenges. At the heart of ...
Go deeper with Google Headlines on:
Machine-learning algorithm
[google_news title=”” keyword=”machine-learning algorithm” num_posts=”5″ blurb_length=”0″ show_thumb=”left”]