• No results found

Adaptive Supervision Online Learning for Vision Based Autonomous Systems

N/A
N/A
Protected

Academic year: 2021

Share "Adaptive Supervision Online Learning for Vision Based Autonomous Systems"

Copied!
1
0
0

Loading.... (view fulltext now)

Full text

(1)

Linköping Studies in Science and Technology

Dissertation No. 1749

Kri

sto

ffe

r Ö

fjä

ll A

da

pti

ve S

up

erv

isio

n O

nli

ne L

ea

rn

in

g f

or V

isio

n B

as

ed A

uto

no

m

ou

s S

ys

te

m

s

20

16

Adaptive Supervision Online

Learning for Vision Based

Autonomous Systems

Kristoffer Öfjäll

INSTITUTE OF TECHNOLOGY

Linköping Studies in Science and Technology, Dissertation No. 1749, 2016 Department of Electrical Engineering

Linköping University SE-581 83 Linköping, Sweden

References

Related documents

Drawing on postsocialist, postcolonial, queer and feminist visual culture studies, the author argues that Treumund’s art is always already embedded in the local context, as it

SAA , intracheally injected with both 1) 4 million alveolar macrophages loaded with commercial BaSO4 contrast agent for CT or 2) 2 million alveolar macrophages loaded with GdNP as

The studies presented in this thesis are part of a body of research in Resilience Engineering (RE) that in the past decade has developed theories, methods and models, and

Inspired by the findings that JR2KC was membrane active when conjugated to liposomes the interactions of the amphipathic coiled coil peptides KIC, KVC, EI and EV (peptides described

The results obtained for class-E power amplifier using GaN HEMT are; the power added efficiency (PAE) of 70 % with a gain of 13.0 dB at an output power of 43.0 dBm,

1994, "The promoter of the barley aleurone-specific gene encoding a putative 7 kDa lipid transfer protein confers aleurone cell-specific expression in transgenic rice",

The mechanism of the coupling between the mass and charge transfer in electrochemical systems, and particularly in conductive polymer based system, is highly

Most of these cases however, stem from large enterprises or IT-intensive small or medium-sized enterprises (SME). The current ontology development methodologies are not tailored