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*(Drone & Me: An Exploration Into Natural Human-Drone Interaction)
*(Drone & Me: An Exploration Into Natural Human-Drone Interaction)
Jessica R. Cauchard, Jane L. E, Kevin Y. Zhai, James A. Landay
Jessica R. Cauchard, Jane L. E, Kevin Y. Zhai, James A. Landay
=Meetings with people=
==Fire department TU/e==
==Drone team fire department Rotterdam==
=Test equipment=
==Drone==

Revision as of 10:45, 28 September 2018

Preface

Usefull Links

via the link below notes from coach meetings and our own meetings can be found

notes

Group members

Name Study Student ID
Buijvoets D.C.J.T Mechanical & Electrical Engineering 0902148
Cornet, N. Industrial Design 1007926
Horssen, C. Software Science 0885378
Mouw, F.A. Applied Physics 1005735
Stokbroekx, D.L.M. Mechanical Engineering 1010326

Initial robotic concepts

After discussing several subjects from different fields in society, we came up with the following list of robotic concepts which have potential to solve problems faced by certain users.

  • Fire fighter drone which can be used to aid fire fighters
  • Cleaning drone for difficult to reach spots in buildings
  • Pavement cleaning drone which can remove dirt from tiles
  • Avalanche rescue drone that helps rescuing teams search for victims in an avalanche using already available beacons
  • Weeding robot which can differentiate between wanted and unwanted plants in a garden and remove the weeds
  • Referee robot using image processing to determine the state of a match in e.g. soccer or tennis
  • Medical nanobots for drug delivery
  • Fruit harvest robots

Chosen concept: Fast Response Extinguish Drone, F.R.E.D.

Eventually we agreed upon the concept of a fire fighter drone. Fire fighting is one of the most dangerous jobs and every year people are still being killed by fires. Extra preparation and information on the fire site can make the difference between life and death. That is where we thought a drone could be of help.

Problem statement

How can drones be used for fully autonomous fire fighting in smart homes. In this project the focus will be on the fire extinguishing part of fire fighting.

Objectives

  • The fire fighting robot needs to give victims information about what they can do to improve their chances of survival without injury
  • It needs to be able to communicate the current state of the fire back to the fire department to inform and prepare firefighters
  • The drone has to be able to enter and fly inside a building autonomously
  • It has to have the ability to extinguish small fires

During this project, our focus will especially be on the last objective.

USE analysis

Relevant users and their requirements

  • Fire fighters will require a fast response time to the fire and an accurate analysis of the fire site
  • Victims require information on how to reduce harm to themselves and others and a safe rescue

Because no contact could be found with any victims, and that there was no chance to visit the fire department yet, the following requirements are based upon the usage of common sense and the information found on victim support sites. These are temporary and will be further validated once contact with experts has been made.

Two options
  • Firedepartment owns the drones
  • Drones are part of smart home package (in that case, building owner becomes main stakeholders)
Main users
  • Fire fighters/Fire Department
The fire department uses the drone in order to put out fires more easily, safer and faster. Because the drone can be at the site of the fire faster than the fire fighters, the fire will get less time to spread out and victims have a bigger chance of survival. Furthermore if a part of the fire is already extinguished, the firefighters themselves are less at risk to sustain serious or even lethal injuries.
Requirements:
  • Fire localization
The drone needs to be able to search for and recognize an ongoing fire
  • Autonomous flight
The drone need to be able to fly to the site of the fire autonomously
  • Long durability
The drone needs to be fire resistant and to be able to withstand at least XXX missions.
  • Long battery life
The drone needs to be able to fly around actively for at least XXX minutes
  • Victim recognition
The drone needs to be able to recognize humans/victims close to the fire
  • Able to extinguish small fires
The drone needs to be able to extinguish small fires (max. AFMETINGEN)
  • Situation analysis
The drone needs to be able to analyse the situation, the damage and if the call was a false alarm or not


  • Fire victims
Being amids a fire, is a very stressful and traumatic experience.Victims during a fire can either be conscious or unconscious. When conscious, the victim needs to be able to be reassured that help is on its way and to stay as calm as possible. When unconscious it is important that the victim attains as little (further) damage or injuries as possible.
Requirements:
  • Make victim feel safe
The drone needs to try to keep the victim as calm as possible, by assuring that help is on its way and to explain every action it is taken. The victim should not feel threatened by the drone
  • Give instructions
After analysing a situation, the drone needs to, if possible, give instructions to the victim of possible actions to improve chance of survival of the victim
  • Cannot (lethally) harm victim in any way
The drone is not allowed to harm the victim in any way, or do something that brings lethal injury to the victim.
Other stakeholders
Building owners
Building owners have
Requirements:
Building should sustain as less damage as possible

Personas

Andrea.jpeg

Relevance to society

  • People living in range of the fire station using this drone will be subject to better rescuing in case of a fire
  • If the drone is being used to aid at fighting a fire, the people living in the viscinity of that fire will have a smaller chance that the fire will affect them

Relevance to enterprise

  • The government
  • Fire department

TU/e Fire Department

Currently the fire department is running a project with the innovation space, by accident a group member came in contact with someone involved with this. They had a demonstration/meeting with the TU/e fire department planned and we were invited to come and have a look on Monday the 24th of September. Also we received a contact within the fire department, this person is responsible for innovation and repression specifically in south-east Brabant.

Rotterdam Fire Department

A conversation was held with the director of the rotterdam fire department, which actually has a fire fighting drone in operation at the moment. This drone is autonomously navigated by another (controlled) vehicle which makes a 3D map of the inside of a building. We will have the opportunity to talk to the project leader of this drone about some points of improvement.

We will visit the Rotterdam fire department on Friday 28th of September

Project setup

Before actually starting the project, a setup is made on how it will be executed.

Approach

  • Decide functionality of the drone
  • Do research on different subjects concerning the functionality of the drone
  • Design drone and functions
  • Make prototype
  • Test prototype

Milestones

For the duration of this course, the following milestones are selected:

  • Week 1: Every member will take the time to do research on robots and their interests, in order to broaden one's horizon on the possible subjects. Afterwards a subject for the project will be chosen.
  • Week 2: Literature study and further research will be completed
  • Week 3: USE analysis is finished
  • Week 4: Design for the first prototype will be finished
  • Week 6: First prototype will be finished
  • Week 8: Final Design, final prototype and all other deliverables will be finished

Deliverables

The following deliverables will be created during this course:

  • Thorough research and literature study
  • Design research process and report
  • A functional drone design
  • (several) Prototypes
  • Ethical evaluation
  • A wiki page on this domain

Planning: Who's doing what

Week All Dirk Natanya Chiel Fabian Daan Undecided
1 Finding suitable projects + finding articles on the chosen subject Basic user requirements Formulating Problem statement
2 Further elaborating user requirements and USE analysis + making persona’s of the users State of the art research State of the art research State of the art research Further elaborating user requirements and USE analysis + start making designs for the robot
3 Checking wiki and correcting formulation if necessary Continuing on design for the robot + finishing USE analysis
4 Starting constructing prototype/control Starting on control software for the robot Starting constructing of the prototype Starting constructing of the prototype Finishing robot design
5 Checking wiki and correcting formulation if necessary Construction of the prototype Construction of the prototype
6 Testing and evaluating prototype + find and analyse flaws in the design + fixing the design flaws First prototype finished First prototype finished
7 Find and analyse flaws in the design + fixing the design flaws + checking wiki and correcting formulation if necessary Preparing presentation Preparing presentation
8 Final design and robot finished + Presentation of the result

Response Time

The most common types of fire in and around homes are: kitchen fires, electrical fires, heater fires and smoking related fires. In the end a drone capable of responding to all these fire types is preferable but since kitchen fires are most common the focus will first be on this type of fire. Most fires in the kitchen are grease (vet) fires, these fires are dangerous because they tend to get out of control fast, usually within minutes. Therefore, it’s important that the drone can be on side very fast. The response time of the drone depends on several aspects: the location where the drone is stationed in the building, the speed at which it can move through the building and the way the fire is reported to the drone.

Placement in building

When placing F.R.E.D. in a building it is important for a small response time that the drone is located close to rooms or areas with higher risks of fire. In the figure a picture of a typical apartment can be found. In this picture different rooms with different functions can be seen. An important user requirement is that the user doesn’t constantly see or bump into the drone. Therefore, the drone should be placed on a discrete location close to the kitchen. Since the most ideal situation for the drone to operate in is a smart home environment this will also be considered for finding a good location. When a new smart home is built with F.R.E.D. integrated in it, there are a few good locations for placing the drone.

  • The first possibility is to place the drone in the ceiling, in this way the drone will never hinder the user, but it may cause some difficulties for maintenance and routine checks of the drone. It’s therefore important that the drone will be easily accessible in a safe way for the user.
  • A different possibility is to place the drone inside a wall, this can be in a horizontal or vertical position. A drone may have some difficulties to lift of in a vertical position especially when it is heavy. Therefore, a mechanism is required that first brings the drone horizontal before it can be launched when placed vertical in the wall. A disadvantage for the user is that a piece of wall must remain free and unblocked for the drone. When the drone is placed in the wall on an appropriate height, let’s say around 1.20 meters, it’s easily accessible for maintenance or routine checks.
  • The drone can also be placed inside the floor, this is comparable to placement in the ceiling but in this situation the drone is better accessible by the user when required. A major disadvantage of this is that some places of the floor can’t be used by the user for placing furniture. Also, it’s required that the drone isn’t located somewhere where there is a door, in a hallway or on the evacuation route because this may hinder the user in getting around in his own house.

In existing buildings ceiling, floor or wall are not always possible locations. Therefore, the drone could also be placed inside a closet or specially designed dogging station on the wall. When people have a kitchen with a build in fridges and other kitchen equipment there is usually a lot of unused space above or below the fridges or kitchen cupboards. This space can be used to place the drone. These solutions can also be used in new buildings. For the placement of the drone it is important to give the user a choice where he or she might want the drone to be localized since this may differ per user. But a recommendation can be given, the best way to place the drone is in a wall for newly build smart homes and for existing houses the best location is making use of unused spaces in the kitchen. No matter the location of the drone the deployment might take some time however this may never exceed 10 seconds.

Reporting the fire

When a proper location for F.R.E.D. has been found a way of reporting the fire to the drone must be chosen. This can be done via an automatic fire alarm using smoke and/or heat detectors. Since a smart home environment is considered the drone knows the location of the fire. A different possibility for reporting the fire is manually by using a switch on a wall or an app on your smart phone. Manual switches on walls to trigger the fire alarm can already be found in a lot of larger buildings. The only issue with these is that they don’t look very nice and a user might not want to have these switches in every room of his house. Therefore, an app on the user’s smart phone takes away this issue for the user. When a fire is reported via manual switches on the wall or via an app the drone also knows where the fire is located if the alarm is being sounded in the room where the fire is. Nog uitzoeken -> er zijn twee soorten alarmen hoe photoelectric and inization, hoe snel gaan deze af na uitbreken brand.

Travel distance and time

The final step for determining the response time of the drone is the speed at which it can fly. But another very important factor for the speed on the response time is the distance the drone must travel. An average newly build Dutch house is 116 m2 [1], consider this house has 2 floors and is square this would mean the square has sides of 7.6 m. When the drone is located as far away from the fire as possible this would mean it has to travel to the other side of the building change floors and go back to the other side of the building. This would mean the maximum distance it has to travel in an average home also considering walls and moving up to another floor is around 25 meters. A drone that would be very capable to use as a basis for F.R.E.D. (unfortunately not available for this project) is the DJI Matrice 600, it can lift up to 6 kilos and has a top speed of 18 meters per second [2]. So, the top speed of the drone isn’t really an issue. But the drone also must make turns and should not further endanger the people in the house. Therefore, the top speed of the drone should be limited to 1 meter per second because the drone will still be able to reach the fire within 30 seconds when it’s furthest away from a fire in an average home and with the drone traveling at this speed user in the house can anticipate on the drone moving through the house.

When taking the deployment time, fire alarm response time and distance the drone has to travel into account the overall maximum response time of F.R.E.D. in an average house will be around within 1 minute.  exact number cannot be given yet not everyting is known yet.

[1] http://demographia.com/db-intlhouse.html , [2] https://www.dji.com/matrice600/info

Fire suppression

Extinguish capabilities

The main idea of the drone’s ability to suppress fires is that it can react quickly to small fires that have not gone out of control yet. It would be unrealistic to assume that a single drone without a continuous water supply would be able to extinguish large house fires, so the focus lies on preventing large fires by reacting quickly.

One of the most common types are kitchen fires.[1] Amongst these, grease fires occur frequently and can be very hard to control. Other kitchen fires can include oven fires and electrical fires. Since grease fires are among the most common types of fires and one of the most challenging to suppress, we set the drone’s goal at being able to suppress an average grease fire (resulting from heating grease in a pan up to its auto ignition temperature).

If the drone is able to suppress this type of fire (type F), we can almost assume that it will be able to suppress fires of type A, B and C of the same scale too. Though further experimentation might be needed to validate this assumption.

Extinguish mechanism

Since the drone has to be able to extinguish fires unmanned, and preferably autonomous, it must have an electro-mechanical extinguish mechanism of some sort. An actuator attached to the drone should be able to control the stream of suppressant (at least on or off). Furthermore, the stream of suppressant should be ejected to the front (or sides) of the drone through a nozzle. A drone cannot fly directly above fire since the air will be too turbulent and therefore the suppressant cannot just be dropped underneath the drone. There should also be a container to hold all of the suppressant.

The actual mechanism will depend on the suppressant that will be used. It will most likely consist of a solenoid valve, since this type of valves can be controlled electronically. The driving force behind the suppressant can either be a preloaded pressure in the container or a pump. This also depends on the used type of suppressant and the design of the container.

[1]https://www.nfpa.org/Public-Education/By-topic/Top-causes-of-fire/Cooking/Reports-and-statistics-about-cooking-fires-and-safety

State of the art: Literature study

One of the most important facets of this project is to come to an understanding of the current state of technologic advancement that is relevant to the drone and its functionalities. Therefore, literature on different relevant catagories is studied to understand the state of the art. Here follows a list of the scientific research that was studied for this project, divided into the different relevant catagories.

Drones in firefighting

Drones and robots are already extensively used in firefighting but there are few examples of actual autonomous fire extinguishing drones. Most drones in firefighting are used to support humans by providing vital information on the emergency.

Drones provide information on how fires are spreading and developing to firefighters to increases the efficiency of the process by sending units to right places. The information gathered by these drones can also be further analyzed for a better understanding of how fire spreads for optimization of extinguishing techniques. One of the largest fire departments in the world the L.A.F.D. (Los Angeles Fire Department) is currently researching and using these kind of drones [1]. The drones have been used for the first time during the massive wildfires in December 2017 and have been a great help in the firefighting process. These drones do still require a human pilot and a human to analyze the information.

Drones also help emergency services with other non-fire related disasters. For example, during floods or earthquakes these drones can be in the disaster area much faster to collect information on the situation for the emergency services.

A different application for drones in firefighting is the localization of victims in fires that would otherwise never be found. Currently one of the best drones for this undertaking is the Firestorm UAV [2]. This drone can find victims inside burning buildings using a thermal camera also this drone can detect toxic gasses and inform firefighters on the situation in a building. Using bright LED lights, the drone can lead a localized victim along the safest path outside of the building.

The emergency services also use the drones to make emergency deliveries to certain disaster areas. The payloads of the drones can be extremely diverse, from AED machines, medical- and food supplies. One of the drones currently in development for this purpose by the company ZIPLINE [3]. The drone that is currently being tested in the USA and already operational in Rwanda for blood deliveries to rural hard to get areas drops the payload mid-air before it flies back to base to be resupplied and launched again.

Another way in which drones are used by fire departments is to make pre-fire plans for high risk or vital buildings. These drones can map escape routes and localize water supplies and potential problems for these buildings.

There are some drones that can also extinguish fire. But these drones are not autonomous and require a human pilot or firetruck for water supply and further support. An example of drones used for actual fire extinguishing are the drones produced by the company AERONES [4]. Although these drones are capable of combatting fires they cannot operate without the presence of a fire truck supporting the drone with water and electricity. This drone can reach heights of 300 meters which is much higher than the height a traditional fire truck can reach. However due to the hoses connected to the drone it can only be used for combating the fire from the exterior. This drone can be useful for fires in high-rise buildings or at other great heights that were traditionally hard to reach.

[1] https://uavcoach.com/tipping-points/

[2] https://designmind.frogdesign.com/2014/03/drones-will-save-life/

[3] https://www.theverge.com/2018/4/13/17206398/zipline-drones-delivery-blood-emergency-medical-supplies-startup-rwanda-tanzania

[4] https://www.aerones.com/eng/drones/firefighting_drone/

General Drone Information

  • Remington, Raquel, et al. "Multi-Purpose Aerial Drone for Bridge Inspection and Fire Extinguishing." (Unpublished Thesis). Florida International University. Retrieved April 10 (2014): 2016. (Fabian)
  • Suresh, Jayanth. "Fire-fighting robot." Computational Intelligence in Data Science (ICCIDS), 2017 International Conference on. IEEE, 2017.(Fabian)
  • Design of a portable robot/device that is able to gather environmental information about the fire and guide victims for evacuation: Kim, Y.-D., Kim, Y.-G., Lee, S.-H., Kang, J.-H., An, J. “Portable fire evacuation guide robot system” (2009) IEEE/RSJ International Conference on Intelligent Robots and Systems, IROS 2009, art. no. 5353970, pp. 2789-2794. (Daan)

Autonomous drone navigation

  • General controller for safer autonomous navigation: Pestana, J., Mellado-Bataller, I., Fu, C., Sanchez-Lopez, J.L., Mondragon, I.F., Campoy, P. “A general purpose configurable navigation controller for micro aerial multirotor vehicles” (2013) International Conference on Unmanned Aircraft Systems, ICUAS 2013 - Conference Proceedings, art. no. 6564733, pp. 557-564. (Daan)
  • Complete navigation system using 3D laser scanner for omnidirectional environment perception, local and allocentric maps for positioning and a multi-layered approach for trajectory planning (global mission trajectory and local obstacle avoidance): Nieuwenhuisen, M., Droeschel, D., Beul, M., Behnke, S. “Autonomous Navigation for Micro Aerial Vehicles in Complex GNSS-denied Environments” (2016) Journal of Intelligent and Robotic Systems: Theory and Applications, 84(1-4), pp. 199-216. (Daan)
  • Obstacle avoidance and field planning using monocular sensory input: Mac, T.T., Copot, C., Hernandez, A., De Keyser, R. “Improved potential field method for unknown obstacle avoidance using UAV in indoor environment” (2016) SAMI 2016 - IEEE 14th International Symposium on Applied Machine Intelligence and Informatics - Proceedings, art. no. 7423032, pp. 345-350. (Daan)

Autonomous victim detection

  • Detecting injured humans on images taken from aerial vehicles: ANDRILUKA, Mykhaylo, et al. Vision based victim detection from unmanned aerial vehicles. In: Intelligent Robots and Systems (IROS), 2010 IEEE/RSJ International Conference on. IEEE, 2010. p. 1740-1747. (Chiel)
  • Building maps and marking victims on those maps using hyperspectral imaging: TRIERSCHEID, Marina, et al. Hyperspectral imaging or victim detection with rescue robots. In: Safety, Security and Rescue Robotics, 2008. SSRR 2008. IEEE International Workshop on. IEEE, 2008. p. 7-12. (Chiel)
  • Victim detection using an adapted Viola-Jones algorithm: DE CUBBER, Geert; MARTON, Gabor. Human victim detection. In: Third International Workshop on Robotics for risky interventions and Environmental Surveillance-Maintenance, RISE. 2009. (Chiel)
  • Using ad-hoc network with base station (firetruck or fire department?): SUGIYAMA, Hisayoshi; TSUJIOKA, Tetsuo; MURATA, Masashi. Victim Detection System for Urban Search and Rescue Based on Active Network Operation. In: HIS. 2003. p. 1104-1113. (Chiel)
  • False positive reduction on victim detection from colored images: KLEINER, Alexander; KUMMERLE, Rainer. Genetic MRF model optimization for real-time victim detection in search and rescue. In: Intelligent Robots and Systems, 2007. IROS 2007. IEEE/RSJ International Conference on. IEEE, 2007. p. 3025-3030. (Chiel)
  • Detecting victims using pseudo-noise radars, whose signals scatter from body motions of victims: SACHS, Jürgen, et al. Trapped victim detection by pseudo-noise radar. In: Proceedings of the 1st International Conference on Wireless Technologies for Humanitarian Relief. ACM, 2011. p. 265-272. (Chiel)

Fire detection

  • Detecting fire from colored images, distinguishing fire and smoke: CHEN, Thou-Ho; WU, Ping-Hsueh; CHIOU, Yung-Chuen. An early fire-detection method based on image processing. In: Image Processing, 2004. ICIP'04. 2004 International Conference on. IEEE, 2004. p. 1707-1710. (Chiel)
  • Detecting fire using space-time fluctuations on colored images: YAMAGISHI, Hideaki; YAMAGUCHI, JUNICHI. Fire flame detection algorithm using a color camera. In: Micromechatronics and Human Science, 1999. MHS'99. Proceedings of 1999 International Symposium on. IEEE, 1999. p. 255-260. (Chiel)
  • Detecting fire using Gaussian distributions: CELIK, Turgay, et al. Fire detection using statistical color model in video sequences. Journal of Visual Communication and Image Representation, 2007, 18.2: 176-185. (Chiel)
  • Fire detection in tunnels using cameras and infrared: NODA, S.; UEDA, K. Fire detection in tunnels using an image processing method. In: Vehicle Navigation and Information Systems Conference, 1994. Proceedings., 1994. IEEE, 1994. p. 57-62. (Chiel)

Fire suppression

Today there exists a wide variety of methods to suppress fires. Since this project is based around a drone, one of the main concerns is the weight of the fire suppressant. It should be as light as possible per amount of fire that it can put out. Furthermore, our method should be able to extinguish an as wide variety of fires as possible. Especially fires of class A, B, C and F (European standard) seem to be most common in buildings.

The use of a pressurized water mist extinguisher seems to be impractical. Although an extinguisher of this type is able to suppress fires of type F (cooking oils and fats), next to ordinary fires, a lot of water is needed to put out an average fire. Typical amount of 9 litres are often required[5], which is much more than an average drone can carry next to its own equipment. Furthermore, the suppression of fires using water mist often results in a large fire cloud in the process, due to the increased heat transfer that is caused by the water droplets. This would be impractical as it could harm the drone.

Another method is the use of particulate aerosols. Often, particles are generated from a solid or gel and mix with the air. Particulate aerosols prove to be a very lightweight alternative for water, with results showing the same fire suppressing abilities at a 30 times lower volumetric flow, compared to normal water.[6]

[5] Experiments with a portable mist extinguisher for different types of fires: Liu, Z., Kim, A.K., Carpenter, D. “A study of portable water mist fire extinguishers used for extinguishment of multiple fire types” (2007) Fire Safety Journal, 42 (1), pp. 25-42. (Daan)

[6] Korobeinichev, O.P., Shmakov, A.G., Shvartsberg, V.M., Chernov, A.A., Yakimov, S.A., Koutsenogii, K.P., Makarov, V.I. “Fire suppression by low-volatile chemically active fire suppressants using aerosol technology” (2012) Fire Safety Journal, 51, pp. 102-109.

  • Experiments of different solid particulate aerosol suppressants in the form of a solid, gel or powder: Kibert, C.J., Dierdorf, D. “Solid particulate aerosol fire suppressants” (1994) Fire Technology, 30 (4), pp. 387-399. (Daan)
  • Testing the effectiveness of using nanocomposites as additive to conventional powder suppressants: Ni, X., Kuang, K., Wang, X., Liao, G. “A New Type of BTP/Zeolites Nanocomposites as Mixed-phase Fire Suppressant: Preparation, Characterization, and Extinguishing Mechanism Discussion” (2010) Journal of Fire Sciences, 28 (1), pp. 5-25. (Daan)

Fire resistant materials

  • Lyon, Richard E., et al. "Fire‐resistant aluminosilicate composites." Fire and materials 21.2 (1997): 67-73. (Fabian)
  • Myeong, W. C., Kwang Yik Jung, and Hyun Myung. "Development of FAROS (fire-proof drone) using an aramid fiber armor and air buffer layer." Ubiquitous Robots and Ambient Intelligence (URAI), 2017 14th International Conference on. IEEE, 2017. (Fabian)
  • Myeong, Wancheol, Kwang Yik Jung, and Hyun Myung. "Development of a fire-proof aerial robot system for fire disaster." World Congress on Advances in Nano, Bio, Robotics and Energy (ANBRE). IASEM Conferences, 2017.(Fabian)
  • Abbott, N. J., M. M. Schoppee, and J. Skelton. Heat Resistant and Nonflammable Materials. FABRIC RESEARCH LABS INC DEDHAM MA, 1976. (Fabian)
  • Luo, Qiu-Sheng, Shi-Feng Li, and Hui-Ping Pei. "Progress in titanium fire resistant technology for aero-engine." Journal of Aerospace Power 27.12 (2012): 2763-2768.(Fabian)

Not catagorized yet

  • (Up from the Rubble: Lessons Learned about HRI from Search and Rescue)

Robin R. Murphy & Jennifer L. Burke

  • (Improved Interfaces for Human-Robot Interaction in Urban Search and Rescue)

Michael Baker, Robert Casey, Brenden Keyes, and Holly A. Yanco

  • (Exploring 3D Gesture Metaphors for Interaction with Unmanned Aerial Vehicles)

Kevin P. Pfeil, Seng Lee Koh, Joseph J. LaViola Jr.

  • (Analysis of Human-Robot Interaction for Urban Search and Rescue)

Holly A. Yanco, Michael Baker, Robert Casey, Brenden Keyes, Philip Thoren, Jill L. Drury, Douglas Few, Curtis Nielsen, David Bruemmer

  • (Drone Near Me: Exploring Touch-Based Human-Drone Interaction)

PARASTOO ABTAHI, DAVID Y. ZHAO, JANE L. E, and JAMES A. LANDAY

  • (Evaluation of Human-Robot Interaction Awareness in Search and Rescue)

Jean Scholtz, Jeff Young, Jill L. Drury, Holly A.Yanco

  • (Human-Drone-Interaction: A Case Study to Investigate the Relation Between Autonomy and User Experience)

Patrick Christ, Axel Hösl, Florian Lachner, Klaus Dieopold

  • (Emotion Encoding in Human-Drone Interaction)

Jessica R. Cauchard*, Kevin Y. Zhai, Marco Spadafora, James A. Landay

  • (Human-Robot Interaction in Rescue Robotics)

Robin R. Murphy

  • (Human-Robot Teaming for Search and Rescue)

Illah R. Nourbakhsh, Katia Sycara, Mary Koes, and Mark Yong, Michael Lewis, Steve Burion

  • (Natural User Interfaces for Human-Drone Multi-Modal Interaction)

Ramón A. Suárez Fernández, Jose Luis Sanchez-Lopez, Carlos Sampedro, Hriday Bavle, Martin Molina, and Pascual Campoy (Drone & Wo: Cultural Influences on Human-Drone Interaction Techniques) Jane L. E, Ilene L. E, James A. Landay, Jessica R. Cauchard

  • (Drone & Me: An Exploration Into Natural Human-Drone Interaction)

Jessica R. Cauchard, Jane L. E, Kevin Y. Zhai, James A. Landay

Meetings with people

Fire department TU/e

Drone team fire department Rotterdam

Test equipment

Drone