search

UMD     This Site





Tracking and following an unmarked quadrotor.

Tracking and following an unmarked quadrotor.

 

Drones are everywhere—inexpensive to purchase and widely available. While they are incredibly useful, when used maliciously, unmanned aerial vehicles (UAVs) contribute to a new set of security and confidentiality problems. In this age of drones, better ways of detecting their presence are needed.

New work by ISR-affiliated Professor Yiannis Aloimonos (CS/UMIACS) and Associate Research Scientist Cornelia Fermüller (UMIACS); Nitin Sanket; Chahat Deep Singh; Chethan Parameshwara; and Guido C.H.E. de Croon uses the most ubiquitous part of a drone—the propeller—as the basis for a new detection scheme that is 92% accurate.

EVPropNET: Detecting drone by finding propellers for mid-air landing and following was presented at the 2021 Robotics Science and Systems Conference (RSS 2021) in July. The majority of authors are part of the Perception and Robotics Group at the University of Maryland; de Croon is with the Micro Air Vehicle Laboratory at the Delft University of Technology.

Most commercially available or custom-built drones are multi-rotors and are comprised of multiple propellers. Since these propellers rotate at a high-speed, they are generally the fastest moving parts of an image and cannot be directly "seen" by a classical camera without severe motion blur. In their research, the authors utilize event cameras, a class of sensors that are particularly suitable for such scenarios. Event cameras have a high temporal resolution, low-latency, and high dynamic range.

The researchers modeled the geometry of a propeller, then used the model to generate simulated events. These events were then used to train a deep neural network called EVPropNet to detect propellers using an event camera’s data. EVPropNet directly transfers to the real world without any fine-tuning or retraining.

The approach was successfully evaluated and demonstrated in many real-world experiments with drones using different propeller shapes and sizes. In one experiment, EVPropNet was able to track and follow an unmarked drone; in another it was used on a drone to enable it to land on a nearby hovering drone.

The researchers found EVPropNet can detect propellers at a rate of 85.1% even when 60% of the propeller is occluded. It can run at up to 35Hz on a 2W power budget. They believe this is the first deep learning-based solution for detecting propellers to detect drones.

| Learn more at http://prg.cs.umd.edu/EVPropNet | The open source code is available on github |



Related Articles:
CSRankings places Maryland robotics at #10 in the U.S.
Autonomous drones based on bees use AI to work together
'OysterNet' + underwater robots will aid in accurate oyster count
New system uses machine learning to detect ripe strawberries and guide harvests
Computer vision advances in contact-centered representations, models
Zampogiannis, Ganguly, Aloimonos and Fermüller author "Vision During Action," chapter in new Springer book
Microrobots soon could be seeing better, say UMD faculty in Science Robotics
UMD’s SeaDroneSim can generate simulated images and videos to help UAV systems recognize ‘objects of interest’ in the water
Seven UMD Grand Challenges projects include ISR and MRC faculty
Levi Burner named a Future Faculty Fellow

September 3, 2021


«Previous Story  

 

 

Current Headlines

Srivastava Named Inaugural Director of Semiconductor Initiatives and Innovation

State-of-the-Art 3D Nanoprinter Now at UMD

UMD, Partners Receive $31M for Semiconductor Research

Two NSF Awards for ECE Alum Michael Zuzak (Ph.D. ’22)

Applications Open for Professor and Chair of UMD's Department of Materials Science and Engineering

Ghodssi Honored With Gaede-Langmuir Award

Milchberg and Wu named Distinguished University Professors

New features on ingestible capsule will deliver targeted drugs to better treat IBD, Crohn’s disease

Forty years of MEMS research at the Hilton Head Workshop

Baturalp Buyukates (ECE Ph.D. ’21) Honored by IEEE ComSoc

 
 
Back to top  
Home Clark School Home UMD Home