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Margarita Chli

Margarita Chli [1] is an assistant professor and leader of the Vision for Robotics Lab at ETH Zürich in Switzerland. Chli is a leader in the field of computer vision and robotics and was on the team of researchers to develop the first fully autonomous helicopter with onboard localization and mapping. Chli is also the Vice Director of the Institute of Robotics and Intelligent Systems and an Honorary Fellow of the University of Edinburgh in the United Kingdom. Her research currently focuses on developing visual perception and intelligence in flying autonomous robotic systems.

Margarita Chli
Chli in 2015
NationalityGreek
Alma materUniversity of Cambridge
Imperial College London
Known forInnovating autonomous aerial vehicles
Awards2017 Zonta Prize, 2017 Speaker at the World Economic Forum in Davos, 25 Women in Robotics You Need to Know
Scientific career
FieldsRobotics and computer vision
InstitutionsETH Zürich

Early life and education

Chli grew up in Cyprus and Greece.[2] She pursued her undergraduate degree at the University of Cambridge in the United Kingdom.[2] She conducted her studies in Information and Computer Engineering at Trinity College.[2] After receiving her bachelor's degree, she continued at Trinity to conduct her Masters in engineering as well.[2]

In 2006, Chli pursued her graduate work at Imperial College London under the mentorship of Andrew Davison.[3] She worked in the Robot Vision Group where she worked towards developing novel ways to manipulate data to enable efficient autonomous navigation of mobile devices.[4] Since vision-based methods are the key to enabling autonomous navigation, Chli tried to address the challenges that lie in preserving precision while achieving efficient information processing.[4] She used the principles of Information Theory to guide the estimation based decisions made after gathering information from the environment and showed that these principals improved the efficiency and consistency of the algorithms used to estimate motion and form probabilistic maps of the environment.[4]  Her algorithms also enabled dense feature mapping even in the presence of ambiguity and inconsistencies in camera dynamics.[4] Chli completed her graduate work in 2009 and worked for one year as a research associated in the Robot Vision Group.[3]

Career and research

After completing her PhD, Chli joined the Autonomous Systems Lab at ETH Zürich for her postdoctoral research, and soon became the Lab Deputy Director.[2] While at ETH Zürich, she taught the Autonomous Mobile Robot Course, and this was later turned into an online course to train thousands of researchers worldwide for free.[5] In 2013, Chli was awarded the Chancellor's Fellowship, and became an assistant professor at the Institute of Perception Action and Behavior at the University of Edinburgh.[6] She held this prestigious fellowship for two years.[6]

In 2015, Chli was promoted to the Swiss National Science Foundation (SNF) Assistant Professor in Vision for Robotics at ETH Zürich and relocated her lab from Edinburgh.[4] She still holds an Honorary Fellowship at the University of Edinburgh.[6] Her lab, the Vision for Robots Lab, or V4RL, focuses on developing intelligence robots to improve the quality and safety of human life.[4] Chli has several lines of research going on in her lab to achieve these goals. With the SHERPA project, Chli aims to use intelligent and autonomous robotic systems to help with alpine search and rescue.[7] Chli also participates in research towards the myCopter project whose goal is to design personal automated aerial transportation systems such that one could travel from work to home by air at low altitudes.[8] Lastly, Chli's team develops methods to enable micro aerial vehicles to map out unknown environments through the SFly project (Swarm of micro flying robots).[9] All of these projects require immense innovations in the field of computer vision and robotics, essentially demanding the ability that robots can handle large amounts of data in efficient ways to “see” their environments and respond quickly and autonomously.[citation needed] Chli's team aims to develop these intelligent systems with the capability of visual perception through the use of deep learning and robot collaboration.[citation needed]

Improving methods of computer vision

Chli's early work helped to improve computer vision approaches to enable the construction of autonomous robotic systems. Chli first tackled the issue of simultaneous localization and mapping (SLAM) in which a robotic system has difficulty estimating its new and changing environment while also keeping track of its own location.[10] Since dividing the map into smaller submaps would allow for individual parts of a scene to be processed independently and thus more efficiently, Chli created an innovative method to perform submap division on SLAM maps.[10] She used hierarchical clustering to group similar features together into subgroups and she revealed novel insight into the structure of visual maps which helped to guide the field in addressed the computational issues associated with SLAM.[10]

The next computer vision issue that Chli tackled during her time as a postdoctoral fellow at ETH Zürich, was key point detection in images.[11] She developed a method called BRISK (Binary Robust Invariant Scalable Key points) and it performed much faster and at a much lower computational cost compared to previous key point detection algorithms such as SURF and SIFT.[11]

Autonomous helicopter

During Chli's postdoctoral work at ETH Zürich, she was part of a team that developed the first autonomously flying small helicopter.[12] The helicopter had a monocular camera as the only inertial sensory and was able to navigate in novel environments.[1] It achieved SLAM with extreme robustness to enable its autonomous flight.[12]

Robot navigation

Chli has conducted fundamental research to improve the methods of autonomous robot navigation. One way Chli and her team worked towards improving robot navigation is by creating an algorithm to better integrate information from multiple sensors on the robot.[13] Previously, multisensory integration was challenging due to sensory outages and differences in measurement rates and delays.[13] Due to this, Chli and her team developed a framework called MultiSensor-Fusion Extended Kalman Filter (MSF-EKF) which is able to process delayed, relative, and absolute information from unlimited sensors and sensor types.[13] They tested their framework with a micro aerial vehicle (MAV) that had a GPS receiver as well as visual, inertial, and pressure sensors and they found that it was able to self calibrate and show efficient re-linearization in response to state updates.[13]

With improvements and advances in SLAM capabilities, Chli became interested in creating multi-robot collaborative SLAM.[14] Collaborative scene perception and mapping by a group of autonomous robots would serve a broad spectrum of uses from environmental data collection to surveillance and rescue.[14] In her framework, each individual unmanned aerial vehicle (UAV) would have a local SLAM with limited capacity as a part of its design and computational power, while there would also be a central grounded server to collect and gather all of the information from each individual UAV.[14] This central controller also distributes this information back to all individual UAVs so that they can update their maps as well.[14]

Chli has recently been working with convolutional neural networks (CNN) to improve their ability to perform place recognition for use in robot navigation.[15] She proposed novel CNN-based image features for use in place recognition by creating regional representations of salient regions directly from convolutional layer activation.[15] They found that their system has improved robustness in the face of viewpoint and appearance variations and they shared their insights about the process of feature encoding that make it robust to external variations in their system.[15]

Awards and honors

  • 2017 Zonta Prize[16]
  • 2016 25 Women in Robotics You Need to Know[17]
  • 2016 International Conference on Robotics and Automation Best Associate Editor Award[18]
  • 2001-2005 Scholarship for outstanding qualifications, Trinity College, University of Cambridge, UK[19]
  • 2001-2005 Scholarship for outstanding performance, Cyprus State Scholarship Foundation[19]

Select publications

  • Marco Karrer, Mohit Agarwal, Mina Kamel, Roland Siegwart, Margarita Chli: Collaborative 6DoF Relative Pose Estimation for Two UAVs with Overlapping Fields of View. ICRA 2018: 6688-6693[20]
  • Patrik Schmuck, Margarita Chli: CCM-SLAM: Robust and efficient centralized collaborative monocular simultaneous localization and mapping for robotic teams. J. Field Robotics 36(4): 763-781 (2019)[20]
  • Z. Chen, F. Maffra, I. Sa and M. Chli, "Only look once, mining distinctive landmarks from ConvNet for visual place recognition," 2017 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS), Vancouver, BC, 2017, pp. 9–16, doi: 10.1109/IROS.2017.8202131.[15]
  • P. Schmuck and M. Chli, "Multi-UAV collaborative monocular SLAM," 2017 IEEE International Conference on Robotics and Automation (ICRA), Singapore, 2017, pp. 3863–3870, doi: 10.1109/ICRA.2017.7989445.[14]
  • S. Lynen, M. W. Achtelik, S. Weiss, M. Chli and R. Siegwart, "A robust and modular multi-sensor fusion approach applied to MAV navigation," 2013 IEEE/RSJ International Conference on Intelligent Robots and Systems, Tokyo, 2013, pp. 3923–3929, doi: 10.1109/IROS.2013.6696917.[13]
  • M. W. Achtelik, S. Lynen, S. Weiss, L. Kneip, M. Chli and R. Siegwart, "Visual-inertial SLAM for a small helicopter in large outdoor environments," 2012 IEEE/RSJ International Conference on Intelligent Robots and Systems, Vilamoura, 2012, pp. 2651–2652, doi: 10.1109/IROS.2012.6386270.[12]
  • S. Leutenegger, M. Chli and R. Y. Siegwart, "BRISK: Binary Robust invariant scalable keypoints," 2011 International Conference on Computer Vision, Barcelona, 2011, pp. 2548–2555, doi: 10.1109/ICCV.2011.6126542.[11]
  • M. Chli and A. J. Davison, "Automatically and efficiently inferring the hierarchical structure of visual maps," 2009 IEEE International Conference on Robotics and Automation, Kobe, 2009, pp. 387–394, doi: 10.1109/ROBOT.2009.5152530.[10]
  • Margarita Chli, Andrew J. Davison: Active matching for visual tracking. Robotics Auton. Syst. 57(12): 1173-1187 (2009)[20]

References

  1. ^ a b "12 professors at ETH Zurich appointed". ethz.ch. Retrieved 2020-05-24.
  2. ^ a b c d e "Margarita Chli". edX. Retrieved 2020-05-24.
  3. ^ a b "Margarita Chli". Imperial College London. Retrieved 2020-05-24.
  4. ^ a b c d e f "Applying Information Theory to Efficient SLAM" (PDF). Retrieved May 22, 2020.{{cite web}}: CS1 maint: url-status (link)
  5. ^ "Autonomous Mobile Robots". edX. Retrieved 2020-05-24.
  6. ^ a b c "Margarita Chli". www.margaritachli.com. Retrieved 2020-05-24.
  7. ^ Marconi, L.; Melchiorri, C.; Beetz, M.; Pangercic, D.; Siegwart, R.; Leutenegger, S.; Carloni, R.; Stramigioli, S.; Bruyninckx, H.; Doherty, P.; Kleiner, A. (November 2012). "The SHERPA project: Smart collaboration between humans and ground-aerial robots for improving rescuing activities in alpine environments". 2012 IEEE International Symposium on Safety, Security, and Rescue Robotics (SSRR): 1–4. doi:10.1109/SSRR.2012.6523905. ISBN 978-1-4799-0165-4. S2CID 16286358.
  8. ^ Cybernetics, Max Planck Institute for Biological. "myCopter - EU Project". www.mycopter.eu. Retrieved 2020-05-24.
  9. ^ Achtelik, Markus; Achtelik, Michael; Brunet, Yorick; Chli, Margarita; Chatzichristofis, Savvas; Decotignie, Jean-Dominique; Doth, Klaus-Michael; Fraundorfer, Friedrich; Kneip, Laurent; Gurdan, Daniel; Heng, Lionel (October 2012). "SFly: Swarm of micro flying robots". 2012 IEEE/RSJ International Conference on Intelligent Robots and Systems: 2649–2650. doi:10.1109/IROS.2012.6386281. ISBN 978-1-4673-1736-8. S2CID 4472554.
  10. ^ a b c d Chli, Margarita; Davison, Andrew J. (May 2009). "Automatically and efficiently inferring the hierarchical structure of visual maps". 2009 IEEE International Conference on Robotics and Automation: 387–394. doi:10.1109/ROBOT.2009.5152530. ISBN 978-1-4244-2788-8. S2CID 4474219.
  11. ^ a b c Leutenegger, Stefan; Chli, Margarita; Siegwart, Roland Y. (November 2011). "BRISK: Binary Robust invariant scalable keypoints". 2011 International Conference on Computer Vision: 2548–2555. doi:10.1109/ICCV.2011.6126542. ISBN 978-1-4577-1102-2. S2CID 1211102.
  12. ^ a b c Achtelik, Markus W.; Lynen, Simon; Weiss, Stephan; Kneip, Laurent; Chli, Margarita; Siegwart, Roland (October 2012). "Visual-inertial SLAM for a small helicopter in large outdoor environments". 2012 IEEE/RSJ International Conference on Intelligent Robots and Systems: 2651–2652. doi:10.1109/IROS.2012.6386270. ISBN 978-1-4673-1736-8. S2CID 8265213.
  13. ^ a b c d e Lynen, Simon; Achtelik, Markus W.; Weiss, Stephan; Chli, Margarita; Siegwart, Roland (November 2013). "A robust and modular multi-sensor fusion approach applied to MAV navigation". 2013 IEEE/RSJ International Conference on Intelligent Robots and Systems: 3923–3929. doi:10.1109/IROS.2013.6696917. ISBN 978-1-4673-6358-7. S2CID 14159536.
  14. ^ a b c d e Schmuck, Patrik; Chli, Margarita (May 2017). "Multi-UAV collaborative monocular SLAM". 2017 IEEE International Conference on Robotics and Automation (ICRA): 3863–3870. doi:10.1109/ICRA.2017.7989445. hdl:20.500.11850/272499. ISBN 978-1-5090-4633-1. S2CID 37192904.
  15. ^ a b c d Chen, Zetao; Maffra, Fabiola; Sa, Inkyu; Chli, Margarita (September 2017). "Only look once, mining distinctive landmarks from ConvNet for visual place recognition". 2017 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS): 9–16. doi:10.1109/IROS.2017.8202131. hdl:20.500.11850/174255. ISBN 978-1-5386-2682-5. S2CID 4937391.
  16. ^ "2017". www.zonta.ch. Retrieved 2020-05-24.
  17. ^ "25 women in robotics you need to know about – 2016 | Robohub". Retrieved 2020-05-24.
  18. ^ "ICRA 2016 Award Recipients Announced - IEEE Robotics and Automation Society". www.ieee-ras.org. Retrieved 2020-05-24.
  19. ^ a b "Prof. Margarita Chli - AcademiaNet". www.academia-net.org. Retrieved 2020-05-24.
  20. ^ a b c "dblp: Margarita Chli". dblp.org. Retrieved 2020-05-24.

margarita, chli, assistant, professor, leader, vision, robotics, zürich, switzerland, chli, leader, field, computer, vision, robotics, team, researchers, develop, first, fully, autonomous, helicopter, with, onboard, localization, mapping, chli, also, vice, dir. Margarita Chli 1 is an assistant professor and leader of the Vision for Robotics Lab at ETH Zurich in Switzerland Chli is a leader in the field of computer vision and robotics and was on the team of researchers to develop the first fully autonomous helicopter with onboard localization and mapping Chli is also the Vice Director of the Institute of Robotics and Intelligent Systems and an Honorary Fellow of the University of Edinburgh in the United Kingdom Her research currently focuses on developing visual perception and intelligence in flying autonomous robotic systems Margarita ChliChli in 2015NationalityGreekAlma materUniversity of CambridgeImperial College LondonKnown forInnovating autonomous aerial vehiclesAwards2017 Zonta Prize 2017 Speaker at the World Economic Forum in Davos 25 Women in Robotics You Need to KnowScientific careerFieldsRobotics and computer visionInstitutionsETH Zurich Contents 1 Early life and education 2 Career and research 2 1 Improving methods of computer vision 2 2 Autonomous helicopter 2 3 Robot navigation 3 Awards and honors 4 Select publications 5 ReferencesEarly life and education EditChli grew up in Cyprus and Greece 2 She pursued her undergraduate degree at the University of Cambridge in the United Kingdom 2 She conducted her studies in Information and Computer Engineering at Trinity College 2 After receiving her bachelor s degree she continued at Trinity to conduct her Masters in engineering as well 2 In 2006 Chli pursued her graduate work at Imperial College London under the mentorship of Andrew Davison 3 She worked in the Robot Vision Group where she worked towards developing novel ways to manipulate data to enable efficient autonomous navigation of mobile devices 4 Since vision based methods are the key to enabling autonomous navigation Chli tried to address the challenges that lie in preserving precision while achieving efficient information processing 4 She used the principles of Information Theory to guide the estimation based decisions made after gathering information from the environment and showed that these principals improved the efficiency and consistency of the algorithms used to estimate motion and form probabilistic maps of the environment 4 Her algorithms also enabled dense feature mapping even in the presence of ambiguity and inconsistencies in camera dynamics 4 Chli completed her graduate work in 2009 and worked for one year as a research associated in the Robot Vision Group 3 Career and research EditAfter completing her PhD Chli joined the Autonomous Systems Lab at ETH Zurich for her postdoctoral research and soon became the Lab Deputy Director 2 While at ETH Zurich she taught the Autonomous Mobile Robot Course and this was later turned into an online course to train thousands of researchers worldwide for free 5 In 2013 Chli was awarded the Chancellor s Fellowship and became an assistant professor at the Institute of Perception Action and Behavior at the University of Edinburgh 6 She held this prestigious fellowship for two years 6 In 2015 Chli was promoted to the Swiss National Science Foundation SNF Assistant Professor in Vision for Robotics at ETH Zurich and relocated her lab from Edinburgh 4 She still holds an Honorary Fellowship at the University of Edinburgh 6 Her lab the Vision for Robots Lab or V4RL focuses on developing intelligence robots to improve the quality and safety of human life 4 Chli has several lines of research going on in her lab to achieve these goals With the SHERPA project Chli aims to use intelligent and autonomous robotic systems to help with alpine search and rescue 7 Chli also participates in research towards the myCopter project whose goal is to design personal automated aerial transportation systems such that one could travel from work to home by air at low altitudes 8 Lastly Chli s team develops methods to enable micro aerial vehicles to map out unknown environments through the SFly project Swarm of micro flying robots 9 All of these projects require immense innovations in the field of computer vision and robotics essentially demanding the ability that robots can handle large amounts of data in efficient ways to see their environments and respond quickly and autonomously citation needed Chli s team aims to develop these intelligent systems with the capability of visual perception through the use of deep learning and robot collaboration citation needed Improving methods of computer vision Edit Chli s early work helped to improve computer vision approaches to enable the construction of autonomous robotic systems Chli first tackled the issue of simultaneous localization and mapping SLAM in which a robotic system has difficulty estimating its new and changing environment while also keeping track of its own location 10 Since dividing the map into smaller submaps would allow for individual parts of a scene to be processed independently and thus more efficiently Chli created an innovative method to perform submap division on SLAM maps 10 She used hierarchical clustering to group similar features together into subgroups and she revealed novel insight into the structure of visual maps which helped to guide the field in addressed the computational issues associated with SLAM 10 The next computer vision issue that Chli tackled during her time as a postdoctoral fellow at ETH Zurich was key point detection in images 11 She developed a method called BRISK Binary Robust Invariant Scalable Key points and it performed much faster and at a much lower computational cost compared to previous key point detection algorithms such as SURF and SIFT 11 Autonomous helicopter Edit During Chli s postdoctoral work at ETH Zurich she was part of a team that developed the first autonomously flying small helicopter 12 The helicopter had a monocular camera as the only inertial sensory and was able to navigate in novel environments 1 It achieved SLAM with extreme robustness to enable its autonomous flight 12 Robot navigation Edit Chli has conducted fundamental research to improve the methods of autonomous robot navigation One way Chli and her team worked towards improving robot navigation is by creating an algorithm to better integrate information from multiple sensors on the robot 13 Previously multisensory integration was challenging due to sensory outages and differences in measurement rates and delays 13 Due to this Chli and her team developed a framework called MultiSensor Fusion Extended Kalman Filter MSF EKF which is able to process delayed relative and absolute information from unlimited sensors and sensor types 13 They tested their framework with a micro aerial vehicle MAV that had a GPS receiver as well as visual inertial and pressure sensors and they found that it was able to self calibrate and show efficient re linearization in response to state updates 13 With improvements and advances in SLAM capabilities Chli became interested in creating multi robot collaborative SLAM 14 Collaborative scene perception and mapping by a group of autonomous robots would serve a broad spectrum of uses from environmental data collection to surveillance and rescue 14 In her framework each individual unmanned aerial vehicle UAV would have a local SLAM with limited capacity as a part of its design and computational power while there would also be a central grounded server to collect and gather all of the information from each individual UAV 14 This central controller also distributes this information back to all individual UAVs so that they can update their maps as well 14 Chli has recently been working with convolutional neural networks CNN to improve their ability to perform place recognition for use in robot navigation 15 She proposed novel CNN based image features for use in place recognition by creating regional representations of salient regions directly from convolutional layer activation 15 They found that their system has improved robustness in the face of viewpoint and appearance variations and they shared their insights about the process of feature encoding that make it robust to external variations in their system 15 Awards and honors Edit2017 Zonta Prize 16 2016 25 Women in Robotics You Need to Know 17 2016 International Conference on Robotics and Automation Best Associate Editor Award 18 2001 2005 Scholarship for outstanding qualifications Trinity College University of Cambridge UK 19 2001 2005 Scholarship for outstanding performance Cyprus State Scholarship Foundation 19 Select publications EditMarco Karrer Mohit Agarwal Mina Kamel Roland Siegwart Margarita Chli Collaborative 6DoF Relative Pose Estimation for Two UAVs with Overlapping Fields of View ICRA 2018 6688 6693 20 Patrik Schmuck Margarita Chli CCM SLAM Robust and efficient centralized collaborative monocular simultaneous localization and mapping for robotic teams J Field Robotics 36 4 763 781 2019 20 Z Chen F Maffra I Sa and M Chli Only look once mining distinctive landmarks from ConvNet for visual place recognition 2017 IEEE RSJ International Conference on Intelligent Robots and Systems IROS Vancouver BC 2017 pp 9 16 doi 10 1109 IROS 2017 8202131 15 P Schmuck and M Chli Multi UAV collaborative monocular SLAM 2017 IEEE International Conference on Robotics and Automation ICRA Singapore 2017 pp 3863 3870 doi 10 1109 ICRA 2017 7989445 14 S Lynen M W Achtelik S Weiss M Chli and R Siegwart A robust and modular multi sensor fusion approach applied to MAV navigation 2013 IEEE RSJ International Conference on Intelligent Robots and Systems Tokyo 2013 pp 3923 3929 doi 10 1109 IROS 2013 6696917 13 M W Achtelik S Lynen S Weiss L Kneip M Chli and R Siegwart Visual inertial SLAM for a small helicopter in large outdoor environments 2012 IEEE RSJ International Conference on Intelligent Robots and Systems Vilamoura 2012 pp 2651 2652 doi 10 1109 IROS 2012 6386270 12 S Leutenegger M Chli and R Y Siegwart BRISK Binary Robust invariant scalable keypoints 2011 International Conference on Computer Vision Barcelona 2011 pp 2548 2555 doi 10 1109 ICCV 2011 6126542 11 M Chli and A J Davison Automatically and efficiently inferring the hierarchical structure of visual maps 2009 IEEE International Conference on Robotics and Automation Kobe 2009 pp 387 394 doi 10 1109 ROBOT 2009 5152530 10 Margarita Chli Andrew J Davison Active matching for visual tracking Robotics Auton Syst 57 12 1173 1187 2009 20 References Edit a b 12 professors at ETH Zurich appointed ethz ch Retrieved 2020 05 24 a b c d e Margarita Chli edX Retrieved 2020 05 24 a b Margarita Chli Imperial College London Retrieved 2020 05 24 a b c d e f Applying Information Theory to Efficient SLAM PDF Retrieved May 22 2020 a href Template Cite web html title Template Cite web cite web a CS1 maint url status link Autonomous Mobile Robots edX Retrieved 2020 05 24 a b c Margarita Chli www margaritachli com Retrieved 2020 05 24 Marconi L Melchiorri C Beetz M Pangercic D Siegwart R Leutenegger S Carloni R Stramigioli S Bruyninckx H Doherty P Kleiner A November 2012 The SHERPA project Smart collaboration between humans and ground aerial robots for improving rescuing activities in alpine environments 2012 IEEE International Symposium on Safety Security and Rescue Robotics SSRR 1 4 doi 10 1109 SSRR 2012 6523905 ISBN 978 1 4799 0165 4 S2CID 16286358 Cybernetics Max Planck Institute for Biological myCopter EU Project www mycopter eu Retrieved 2020 05 24 Achtelik Markus Achtelik Michael Brunet Yorick Chli Margarita Chatzichristofis Savvas Decotignie Jean Dominique Doth Klaus Michael Fraundorfer Friedrich Kneip Laurent Gurdan Daniel Heng Lionel October 2012 SFly Swarm of micro flying robots 2012 IEEE RSJ International Conference on Intelligent Robots and Systems 2649 2650 doi 10 1109 IROS 2012 6386281 ISBN 978 1 4673 1736 8 S2CID 4472554 a b c d Chli Margarita Davison Andrew J May 2009 Automatically and efficiently inferring the hierarchical structure of visual maps 2009 IEEE International Conference on Robotics and Automation 387 394 doi 10 1109 ROBOT 2009 5152530 ISBN 978 1 4244 2788 8 S2CID 4474219 a b c Leutenegger Stefan Chli Margarita Siegwart Roland Y November 2011 BRISK Binary Robust invariant scalable keypoints 2011 International Conference on Computer Vision 2548 2555 doi 10 1109 ICCV 2011 6126542 ISBN 978 1 4577 1102 2 S2CID 1211102 a b c Achtelik Markus W Lynen Simon Weiss Stephan Kneip Laurent Chli Margarita Siegwart Roland October 2012 Visual inertial SLAM for a small helicopter in large outdoor environments 2012 IEEE RSJ International Conference on Intelligent Robots and Systems 2651 2652 doi 10 1109 IROS 2012 6386270 ISBN 978 1 4673 1736 8 S2CID 8265213 a b c d e Lynen Simon Achtelik Markus W Weiss Stephan Chli Margarita Siegwart Roland November 2013 A robust and modular multi sensor fusion approach applied to MAV navigation 2013 IEEE RSJ International Conference on Intelligent Robots and Systems 3923 3929 doi 10 1109 IROS 2013 6696917 ISBN 978 1 4673 6358 7 S2CID 14159536 a b c d e Schmuck Patrik Chli Margarita May 2017 Multi UAV collaborative monocular SLAM 2017 IEEE International Conference on Robotics and Automation ICRA 3863 3870 doi 10 1109 ICRA 2017 7989445 hdl 20 500 11850 272499 ISBN 978 1 5090 4633 1 S2CID 37192904 a b c d Chen Zetao Maffra Fabiola Sa Inkyu Chli Margarita September 2017 Only look once mining distinctive landmarks from ConvNet for visual place recognition 2017 IEEE RSJ International Conference on Intelligent Robots and Systems IROS 9 16 doi 10 1109 IROS 2017 8202131 hdl 20 500 11850 174255 ISBN 978 1 5386 2682 5 S2CID 4937391 2017 www zonta ch Retrieved 2020 05 24 25 women in robotics you need to know about 2016 Robohub Retrieved 2020 05 24 ICRA 2016 Award Recipients Announced IEEE Robotics and Automation Society www ieee ras org Retrieved 2020 05 24 a b Prof Margarita Chli AcademiaNet www academia net org Retrieved 2020 05 24 a b c dblp Margarita Chli dblp org Retrieved 2020 05 24 Retrieved from https en wikipedia org w index php title Margarita Chli amp oldid 1133271213, wikipedia, wiki, book, books, library,

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