Your nail tells you how firmly you are gripping.  We use this method to get accurate representations of grip force.  But our approach has its limits.  We need you to improve this methods and make a difference in science.  A working device and a paper or two in a scientific journal or international conference will be your output.



In biomechanics, we create details models of human kinematic and dynamic properties of arms, hands, fingers, and legs. These models are needed to understand which properties of human movement are intrinsic---caused by muscles, tendons, ligaments and bones---and which are controlled by the nervous system. Our resulting models are used in the construction and control of novel robotic systems, including prosthetic hands and robotic arms and legs.

The use of surface electromyography (sEMG) for prosthetic control has been in place since the 1960's. We go a step further. On the one hand, we optimise the conditioning of the sEMG signal, and find new ways of relating it to limb movement. But we also look at different channels to control prosthetic and assistive robotic devices, including central nervous system implants.

In Machine Learning, we investigate methods to map high-dimensional non-linear data within a control process. Even though most of our data are related to the above fields of research, the methods we employ and develop are general methods, in which we combine deep belief networks with time sequence learning.

Limb rehabilitation and prosthetics are paramount applications of the techniques developed in biomimetic robotics. We focus upon human-computer interfaces to aid the disabled regain the lost limb functionality. In our view, both rehabilitation and prosthetics rely on re-establishing the sensori-motor loop with the missing limb. This includes both ways: feed-forward control by detecting the patient’s will to move and sensorial feedback by transducing digital readings to feelings.

Picture of  Justin Bayer

Justin Bayer

TUM: PhD candidate
time series learning
bayer.justingooglemailcom
Picture of  Bojan Kolosnjaji

Bojan Kolosnjaji

DLR: MSc candidate
learning hand models
Picture of  Claudio Castellini

Claudio Castellini

DLR: postdoc
prosthetics and rehabilitation
claudio.castellinidlrde, +49 8153 28-1093
Picture of  Hannes Höppner

Hannes Höppner

DLR: PhD candidate
human impedance
hannes.hoeppnerdlrde, +49 8153 28-1062
Picture of  Rachel Hornung

Rachel Hornung

DLR: PhD candidate
rehabilitation robotics
rachel.hornungdlrde
Picture of  Daniela Korhammer

Daniela Korhammer

TUM: MSc candidate
EEG/EMG
korhammdin.tumde
Picture of  Dominic Lakatos

Dominic Lakatos

DLR: PhD candidate
human arm dynamics
dominic.lakatosdlrde, +49 8153 28-2467
Picture of  Marvin Ludersdorfer

Marvin Ludersdorfer

TUM: student
mechatronics
Picture of  Dominik Mautz

Dominik Mautz

TUM: BSc candidate
multiview learning
Picture of  Nutan Chen

Nutan Chen

TUM: PhD candidate
hand modelling
Picture of  Christian Osendorfer

Christian Osendorfer

TUM: PhD candidate
unsupervised learning, deep networks
osendorfin.tumde
Picture of  Thomas Rückstiess

Thomas Rückstiess

TUM: PhD candidate
reinforcement learning and design
rueckstiin.tumde
Picture of  Alexander Schiendorfer

Alexander Schiendorfer

TUM: MSc candidate
active learning
Picture of  Patrick van der Smagt

Patrick van der Smagt

TUM: Director of BRML labs
smagtbrmlorg, +49 89 289-25793
Picture of  Hubert Soyer

Hubert Soyer

TUM: MSc candidate
deep convolutional networks
Picture of  Georg Stillfried

Georg Stillfried

DLR: PhD candidate
kinematics of the human hand
georg.stillfrieddlrde
Picture of  Michael Strohmayr

Michael Strohmayr

DLR: postdoc
the DLR artificial skin
michael.strohmayrdlrde
Picture of  Sebastian Urban

Sebastian Urban

TUM: PhD candidate
learning skin data
surbantumde, +49 89 289-25787
Picture of  Holger Urbanek

Holger Urbanek

DLR: PhD candidate
EMG conditioning
holger.urbanekdlrde, +49 8153 28-2450
Picture of  Jörn Vogel

Jörn Vogel

DLR: PhD candidate
BCI robot control
joern.vogeldlrde, +49 8153 28-2166
Picture of  Wolfgang Wiedmeyer

Wolfgang Wiedmeyer

DLR: student
biarticulate muscles
wolfgang.wiedmeyerdlrde, +49 8153 28-1056
Picture of  Julian Zafiris

Julian Zafiris

TUM: MSc candidate
Bayesian nonparametric regression
Picture of  Stefan Zoell

Stefan Zoell

TUM: design



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Below our 15 most recent publications. If you need more, follow the link. And note: All downloadable PDFs are for personal use only. Please do not redistribute.

Fligge N, Urbanek H, Smagt P van der (2013). Relation between object properties and EMG during reaching to grasp. Journal of Electromyography and Kinesiology. 23 (2), 402-410.
Castellini C, Smagt P van der (2013). Evidence of muscle synergies during human grasping. Biological Cybernetics. 107 (2), 233-245.
Hochberg LR, Bacher D, Jarosiewicz B, Masse NY, Simeral JD, Vogel J, Haddadin S, Liu J, Cash SS, Smagt P van der, Donoghue JP (2012). Reach and grasp by people with tetraplegia using a neurally controlled robotic arm. Nature. 485 372-377.
Rückstieß T, Osendorfer C, Smagt P van der (2012). Minimizing Data Consumption with Sequential Online Feature Selection. International Journal of Machine Learning and Cybernetics.
Castellini C, Passig G, Zarka E (2012). Using ultrasound images of the forearm to predict finger positions. IEEE Transactions on Neural Systems and Rehabilitation Engineering. 20 (6), 788-797.
Gustus A, Stillfried G, Visser J, Jorntell H, Smagt P van der (2012). Human hand modelling: kinematics, dynamics, applications. Biological Cybernetics. (106), 741-755.
Braun DJ, Petit F, Haddadin S, Smagt P van der, Albu-Schäffer A, Vijayakumar S (2012). Optimal Torque and Stiffness Control in Compliantly Actuated Robots. Proc. 2012 IEEE/RSJ International Conference on Intelligent Robots and Systems
Atzori M, Gijsberts A, Heynen S, Mittaz-Hager A, Deriaz O, Smagt P van der, Castellini C, Caputo B, Müller H (2012). Building the NINAPRO Database: A Resource for the Biorobotics Community. IEEE International Conference on Biomedical Robotics and Biomechatronics
Synek A, Stillfried G (2012). Multi-body simulation of a human thumb joint by sliding surfaces. IEEE International Conference on Biomedical Robotics and Biomechatronics
Cordella F, Corato FD, Zollo L, Siciliano B, Smagt P van der (2012). Patient performace evaluation using kinect and Monte Carlo-based finger tracking. IEEE International Conference on Biomedical Robotics and Biomechatronics
Gierlach D, Gustus A, Smagt P van der (2012). Generating marker stars for 6D optical tracking. IEEE International Conference on Biomedical Robotics and Biomechatronics
Fligge N, McIntyre J, Smagt P van der (2012). Minimum jerk for human catching movements in 3D. Proc. IEEE International Conference on Biomedical Robotics and Biomechatronics
Friedl W, Hoeppner H, Petit F, Hirzinger G (2011). Wrist and forearm rotation of the DLR Hand Arm System: Mechanical design, shape analysis and experimental validation. Intelligent Robots and Systems (IROS), 2011 IEEE/RSJ International Conference on 1836 -1842.
Grebenstein M, Albu-Schaffer A, Bahls T, Chalon M, Eiberger O, Friedl W, Gruber R, Haddadin S, Hagn U, Haslinger R, Hoeppner H, Jorg S, Nickl M, Nothhelfer A, Petit F, Reill J, Seitz N, Wimbock T, Wolf S, Wusthoff T, Hirzinger G (2011). The DLR hand arm system. Proc. ICRA---International Conference on Robotics and Automation 3175 -3182.
Shahbaz B (2011). Entwicklung eines haptischen Feedback-Geräts zur Reinnervation von 3D-Kräften in den menschlichen Zeh. Master thesis: Technische Universität Dresden