Digitalni repozitorij raziskovalnih organizacij Slovenije

Iskanje po repozitoriju
A+ | A- | Pomoč | SLO | ENG

Iskalni niz: išči po
išči po
išči po
išči po

Možnosti:
  Ponastavi


Iskalni niz: "avtor" (Andrej Gams) .

1 - 10 / 14
Na začetekNa prejšnjo stran12Na naslednjo stranNa konec
1.
Exploiting image quality measure for automatic trajectory generation in robot-aided visual quality inspection
Atae Jafari-Tabrizi, Dieter P. Gruber, Andrej Gams, 2024, izvirni znanstveni članek

Povzetek: Currently, the standard method of programming industrial robots is to perform it manually, which is cumbersome and time-consuming. Thus, it can be a burden for the flexibility of inspection systems when a new component with a different design needs to be inspected. Therefore, developing a way to automate the task of generating a robotic trajectory offers a substantial improvement in the field of automated manufacturing and quality inspection. This paper proposes and evaluates a methodology for automatizing the process of scanning a 3D surface for the purpose of quality inspection using only visual feedback. The paper is divided into three sub-tasks in the same general setting: (1) autonomously finding the optimal distance of the camera on the robot’s end-effector from the surface, (2) autonomously generating a trajectory to scan an unknown surface, and (3) autonomous localization and scan of a surface with a known shape, but with an unknown position. The novelty of this work lies in the application that only uses visual feedback, through the image focus measure, for determination and optimization of the motion. This reduces the complexity and the cost of such a setup. The methods developed have been tested in simulation and in real-world experiments and it was possible to obtain a precision in the optimal pose of the robot under 1 mm in translational, and 0.1° in angular directions. It took less than 50 iterations to generate a trajectory for scanning an unknown free-form surface. Finally, with less than 30 iterations during the experiments it was possible to localize the position of the surface. Overall, the results of the proposed methodologies show that they can bring substantial improvement to the task of automatic motion generation for visual quality inspection.
Ključne besede: robot learning, eobotic quality inspection, visual quality inspection
Objavljeno v DiRROS: 09.05.2024; Ogledov: 67; Prenosov: 351
.pdf Celotno besedilo (3,00 MB)
Gradivo ima več datotek! Več...

2.
Generalization-based acquisition of training data for motor primitive learning by neural networks
Zvezdan Lončarević, Rok Pahič, Aleš Ude, Andrej Gams, 2021, izvirni znanstveni članek

Objavljeno v DiRROS: 10.03.2021; Ogledov: 1488; Prenosov: 607
.pdf Celotno besedilo (1,24 MB)

3.
Robot skill learning in latent space of a deep autoencoder neural network
Rok Pahič, Zvezdan Lončarević, Andrej Gams, Aleš Ude, 2021, izvirni znanstveni članek

Objavljeno v DiRROS: 10.03.2021; Ogledov: 1373; Prenosov: 636
.pdf Celotno besedilo (1,55 MB)

4.
5.
Training of deep neural networks for the generation of dynamic movement primitives
Rok Pahič, Barry Ridge, Andrej Gams, Jun Morimoto, Aleš Ude, 2020, izvirni znanstveni članek

Objavljeno v DiRROS: 10.09.2020; Ogledov: 1752; Prenosov: 895
.pdf Celotno besedilo (1,42 MB)

6.
Deep encoder-decoder networks for mapping raw images to dynamic movement primitives
Rok Pahič, Andrej Gams, Aleš Ude, Jun Morimoto, 2018, objavljeni znanstveni prispevek na konferenci

Objavljeno v DiRROS: 08.10.2019; Ogledov: 2572; Prenosov: 1383
.pdf Celotno besedilo (1,66 MB)

7.
Compensating pose uncertainties through appropriate gripper finger cutoutS
Adam Wolniakowski, Andrej Gams, Aljaž Kramberger, Aleš Ude, 2018, izvirni znanstveni članek

Objavljeno v DiRROS: 09.04.2019; Ogledov: 2357; Prenosov: 980
.pdf Celotno besedilo (979,31 KB)

8.
9.
10.
Human robot cooperation with compliance adaptation along the motion trajectory
Bojan Nemec, Nejc Likar, Andrej Gams, Aleš Ude, 2017, izvirni znanstveni članek

Objavljeno v DiRROS: 19.03.2018; Ogledov: 3065; Prenosov: 1650
.pdf Celotno besedilo (1,67 MB)

Iskanje izvedeno v 0.42 sek.
Na vrh