Inhalt des Dokuments
Robotics-Specific Machine Learning (R-ML) [1]
This
project will develop robotics-specific machine learning methods. The
requirement for such methods follows directly from the no-free-lunch
theorems (Wolpert, 1996) which prove that no machine learning method
works better than random guessing when averaged over all possible
problems. The only way to improve over random guessing is to restrict
the problem space and incorporate prior knowledge about this problem
space into the learning method.
mehr zu: Robotics-Specific
Machine Learning (R-ML) [2]
Photo Cross-linking/mass spectrometry (CLMS) [3]
This
project develops a structure determination method targeting proteins
inaccessible by established techniques. This will be enabled by novel
experimental protocols yielding high-density cross-linking and custom
tailored computational methods to model protein structures from this
data.
mehr zu: Photo
Cross-linking/mass spectrometry (CLMS) [4]
Capabilities and consequences of recursive, hierarchical
information processing in visual systems [5]

- © SCIoI
We investigate human and robot perception. The goal is to develop a
constructive understanding of perceptual information processing,
capitalizing on the analytic-synthetic loop. Our implementation of
this concept is based on the concept of "optical cortex and robotic
interactive perception algorithms". This resemblance is so striking
because it spans various levels of abstraction and matches. Indeed,
this computational architecture enables predictions that match
observations in humans.
mehr zu: Capabilities and
consequences of recursive, hierarchical information processing in
visual systems [6]
Dexterous and Sensorized Soft Robotic Hands [7]

- © SCIoI
Inspired by human grasping and manipulation capabilities, we will
build anthropomorphic soft robotic hands that also act as a sensor to
enable robust interactions with the environment.
Since they are made of soft materials, their morphology adapts to the
environment which increases robustness and safety for human-robot
interaction.
mehr zu: Dexterous and
Sensorized Soft Robotic Hands [8]
Co-Design of Feedback Control and Soft Morphology for In-Hand
Manipulation (SPP SMRS) [9]

- © SPP2100
The behavior of a soft robot is determined by the robot's shape and
material properties, i.e. the robot's morphology. As soft robots come
into contact with their environment, they deform, implicitly
performing aspects of control, sensing, and actuation. Clever
morphological design therefore favorably affects the robot's behavior
while at the same time simplifying control and sensing.
In this project, we are co-designing the space of feedback control and
morphology in the context of in-hand manipulation. Within the domain
of in-hand manipulation, we develop computational tools and hardware
components to support the design process, and we derive generalizable
design insights that can transfer to other application of soft
material robotics.
mehr zu: Co-Design of Feedback
Control and Soft Morphology for In-Hand Manipulation (SPP SMRS)
[10]
Parrobots [11]
We research how birds and robots can
learn to solve complex kinematic problems. To this end, we are
building kinematic puzzles, called lockboxes and observe how goffin
cockatoos can learn to solve these. Together with colleagues from
Oxford and Vienna (where the bird experiments happen), we analyze the
problem solving and learning behavior of these birds and try to
extract information that may prove to be useful for a robotic approach
to similar problems.
mehr zu: Parrobots
[12]
Intelligent Kinematic Problem Solving [13]

- © SCIoI
The aim of this project is to investigate intelligent physical
problem solving. Our example problem is an escape room scenario, where
a robot needs to find a way to escape by physically interacting with
the world (e.g. pull doors open, turn keys etc)
mehr zu: Intelligent Kinematic
Problem Solving [14]
Soft Manipulation (SOMA) [15]

- © RBO
The main obstacle to a wide-spread adoption of advanced
manipulation systems in industry is their complexity, fragility, lack
of strength, and difficulty of use. This project describes a path of
disruptive innovation for the development of simple, compliant, yet
strong, robust, and easy-to-program manipulation systems. The idea is:
Soft Manipulation (SoMa). The project is funded by European Union's
Horizon 2020 Research and Innovation Programme under Grant Agreement
645599.
mehr zu: Soft Manipulation
(SOMA) [16]
Physical Exploration Challenge [17]

- © RBO
This project addresses a fundamental challenge in the intersection
of machine learning and robotics. The machine learning community has
developed formal methods to generate behaviour for agents that learn
from their own actions. However, several fundamental questions are
raised when trying to realize such behaviour on real-world robotics
systems that shall learn to perceive, actuate and explore degrees of
freedom (DoF) in the world. These questions pertain to basic
theoretical aspects as well as the tight dependencies between
exploration strategies and the perception and motor skills used to
realize them.
mehr zu: Physical Exploration
Challenge [18]
Amazon Picking Challenge 2015 [19]

- © RBO
In May 2015, our Team RBO won a prestigious international robotics
challenge, the Amazon Picking Challenge. This challenge aims to solve
one of the last problems in warehouse automation: identifying and
grasping objects from a warehouse shelf.
Our robot was able to secure the lead by picking 10 out of 12 objects,
outperforming 25 teams from Europe, USA and Asia, amongst them teams
from the Massachusetts Institute of Technology (MIT), UC Berkeley as
well as many robotics companies.
mehr zu: Amazon Picking
Challenge 2015 [20]
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Links: ------
[1]
https://www.robotics.tu-berlin.de/menue/projekte/ro
botics_specific_machine_learning_r_ml/parameter/de/font
1/minhilfe/
[2]
https://www.robotics.tu-berlin.de/menue/projekte/ro
botics_specific_machine_learning_r_ml/parameter/de/font
1/minhilfe/
[3]
https://www.robotics.tu-berlin.de/menue/projekte/ph
oto_cross_linkingmass_spectrometry_clms/parameter/de/fo
nt1/minhilfe/
[4]
https://www.robotics.tu-berlin.de/menue/projekte/ph
oto_cross_linkingmass_spectrometry_clms/parameter/de/fo
nt1/minhilfe/
[5]
https://www.robotics.tu-berlin.de/menue/projekte/ca
pabilities_and_consequences_of_recursive_hierarchical_i
nformation_processing_in_visual_systems/parameter/de/fo
nt1/minhilfe/
[6]
https://www.robotics.tu-berlin.de/menue/projekte/ca
pabilities_and_consequences_of_recursive_hierarchical_i
nformation_processing_in_visual_systems/parameter/de/fo
nt1/minhilfe/
[7]
https://www.robotics.tu-berlin.de/menue/projekte/de
xterous_and_sensorized_soft_robotic_hands/parameter/de/
font1/minhilfe/
[8]
https://www.robotics.tu-berlin.de/menue/projekte/de
xterous_and_sensorized_soft_robotic_hands/parameter/de/
font1/minhilfe/
[9]
https://www.robotics.tu-berlin.de/menue/projekte/co
_design_of_feedback_control_and_soft_morphology_for_in_
hand_manipulation_spp_smrs/parameter/de/font1/minhilfe/
[10]
https://www.robotics.tu-berlin.de/menue/projekte/c
o_design_of_feedback_control_and_soft_morphology_for_in
_hand_manipulation_spp_smrs/parameter/de/font1/minhilfe
/
[11]
https://www.robotics.tu-berlin.de/menue/projekte/p
arrobots/parameter/de/font1/minhilfe/
[12]
https://www.robotics.tu-berlin.de/menue/projekte/p
arrobots/parameter/de/font1/minhilfe/
[13]
https://www.robotics.tu-berlin.de/menue/projekte/i
ntelligent_kinematic_problem_solving/parameter/de/font1
/minhilfe/
[14]
https://www.robotics.tu-berlin.de/menue/projekte/i
ntelligent_kinematic_problem_solving/parameter/de/font1
/minhilfe/
[15]
https://www.robotics.tu-berlin.de/menue/projekte/s
oft_manipulation_soma/parameter/de/font1/minhilfe/
[16]
https://www.robotics.tu-berlin.de/menue/projekte/s
oft_manipulation_soma/parameter/de/font1/minhilfe/
[17]
https://www.robotics.tu-berlin.de/menue/projekte/p
hysical_exploration_challenge/parameter/de/font1/minhil
fe/
[18]
https://www.robotics.tu-berlin.de/menue/projekte/p
hysical_exploration_challenge/parameter/de/font1/minhil
fe/
[19]
https://www.robotics.tu-berlin.de/menue/projekte/a
mazon_picking_challenge_2015/parameter/de/font1/minhilf
e/
[20]
https://www.robotics.tu-berlin.de/menue/projekte/a
mazon_picking_challenge_2015/parameter/de/font1/minhilf
e/