Object manipulation with a variable-stiffness robotic mechanism using deep neural networks for visual semantics and load estimation
Artikel i vetenskaplig tidskrift, 2019

In recent years, the computer vision applications in the robotics have been improved to approach human-like visual
perception and scene/context understanding. Following this aspiration, in this study, we explored the possibility of better
object manipulation performance by connecting the visual recognition of objects to their physical attributes, such as weight
and center of gravity (CoG). To develop and test this idea, an object manipulation platform is built comprising a robotic
arm, a depth camera fixed at the top center of the workspace, embedded encoders in the robotic arm mechanism, and
microcontrollers for position and force control. Since both the visual recognition and force estimation algorithms use deep
learning principles, the test set-up was named as Deep-Table. The objects in the manipulation tests are selected from
everyday life and are common to be seen on modern office desktops. The visual object localization and recognition
processes are performed from two distinct branches by deep convolutional neural network architectures. We present five of
the possible cases, having different levels of information availability on the object weight and CoG in the experiments. The
results confirm that using our algorithm, the robotic arm can move different types of objects successfully varying from
several grams (empty bottle) to around 250 g (ceramic cup) without failure or tipping. The proposed method also shows
that connecting the object recognition with load estimation and contact point further improves the performance characterized
by a smoother motion.

Object Recognition

Force Estimation

Robotic Manipulation

Context Awareness

Deep Neural Networks

Författare

Ertugrul Bayraktar

Duzce University

Cihat Bora Yigit

Siemens AS

Pinar Boyraz Baykas

Olycksanalys och prevention

Neural Computing and Applications

0941-0643 (ISSN) 1433-3058 (eISSN)

Ämneskategorier

Maskinteknik

Annan maskinteknik

Medicinsk apparatteknik

Robotteknik och automation

Styrkeområden

Informations- och kommunikationsteknik

Produktion

Livsvetenskaper och teknik (2010-2018)

Drivkrafter

Innovation och entreprenörskap

DOI

10.1007/s00521-019-04412-5

Mer information

Skapat

2019-08-07