Dynamic Switching State Systems for Visual Tracking / / Stefan Becker.

This work addresses the problem of how to capture the dynamics of maneuvering objects for visual tracking. Towards this end, the perspective of recursive Bayesian filters and the perspective of deep learning approaches for state estimation are considered and their functional viewpoints are brought t...

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Place / Publishing House:Karlsruhe : : KIT Scientific Publishing,, 2020.
Year of Publication:2020
Language:English
Series:Karlsruher Schriften zur Anthropomatik
Physical Description:1 online resource (228 pages) :; illustrations.
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spelling Becker, Stefan, author.
Dynamic Switching State Systems for Visual Tracking / Stefan Becker.
Karlsruhe : KIT Scientific Publishing, 2020.
1 online resource (228 pages) : illustrations.
text txt rdacontent
computer c rdamedia
online resource cr rdacarrier
Karlsruher Schriften zur Anthropomatik
Description based on publisher supplied metadata and other sources.
This work addresses the problem of how to capture the dynamics of maneuvering objects for visual tracking. Towards this end, the perspective of recursive Bayesian filters and the perspective of deep learning approaches for state estimation are considered and their functional viewpoints are brought together.
English.
Computer science.
1000122541
language English
format eBook
author Becker, Stefan,
spellingShingle Becker, Stefan,
Dynamic Switching State Systems for Visual Tracking /
Karlsruher Schriften zur Anthropomatik
author_facet Becker, Stefan,
author_variant s b sb
author_role VerfasserIn
author_sort Becker, Stefan,
title Dynamic Switching State Systems for Visual Tracking /
title_full Dynamic Switching State Systems for Visual Tracking / Stefan Becker.
title_fullStr Dynamic Switching State Systems for Visual Tracking / Stefan Becker.
title_full_unstemmed Dynamic Switching State Systems for Visual Tracking / Stefan Becker.
title_auth Dynamic Switching State Systems for Visual Tracking /
title_new Dynamic Switching State Systems for Visual Tracking /
title_sort dynamic switching state systems for visual tracking /
series Karlsruher Schriften zur Anthropomatik
series2 Karlsruher Schriften zur Anthropomatik
publisher KIT Scientific Publishing,
publishDate 2020
physical 1 online resource (228 pages) : illustrations.
isbn 1000122541
callnumber-first Q - Science
callnumber-subject QC - Physics
callnumber-label QC174
callnumber-sort QC 3174.12 B435 42020
illustrated Illustrated
dewey-hundreds 500 - Science
dewey-tens 530 - Physics
dewey-ones 530 - Physics
dewey-full 530.12
dewey-sort 3530.12
dewey-raw 530.12
dewey-search 530.12
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is_hierarchy_title Dynamic Switching State Systems for Visual Tracking /
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