Multi-Level Bayesian Models for Environment Perception
This book deals with selected problems of machine perception, using various 2D and 3D imaging sensors. It proposes several
new original methods, and also provides a detailed state-of-the-art overview of existing techniques for automated, multi-level interpretation of the observed static or dynamic environment. Les mer
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This book deals with selected problems of machine perception, using various 2D and 3D imaging sensors. It proposes several
new original methods, and also provides a detailed state-of-the-art overview of existing techniques for automated, multi-level
interpretation of the observed static or dynamic environment. To ensure a sound theoretical basis of the new models, the surveys
and algorithmic developments are performed in well-established Bayesian frameworks. Low level scene understanding functions
are formulated as various image segmentation problems, where the advantages of probabilistic inference techniques such as
Markov Random Fields (MRF) or Mixed Markov Models are considered. For the object level scene analysis, the book mainly relies
on the literature of Marked Point Process (MPP) approaches, which consider strong geometric and prior interaction constraints
in object population modeling. In particular, key developments are introduced in the spatial hierarchical decomposition of
the observed scenarios, and in the temporal extension of complex MRF and MPP models. Apart from utilizing conventional optical
sensors, case studies are provided on passive radar (ISAR) and Lidar-based Bayesian environment perception tasks. It is shown,
via several experiments, that the proposed contributions embedded into a strict mathematical toolkit can significantly improve
the results in real world 2D/3D test images and videos, for applications in video surveillance, smart city monitoring, autonomous
driving, remote sensing, and optical industrial inspection.
- FAKTA
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Utgitt:
2022
Forlag: Springer Nature Switzerland AG
Innbinding: Innbundet
Språk: Engelsk
Sider: 202
ISBN: 9783030836535
Format: 24 x 16 cm
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Les vurderinger
Introduction.- Fundamentals. - Bayesian models for Dynamic Scene Analysis.- Multi-layer label fusion models.- Multitemporal
data analysis with Marked Point Processes. - Multi-level object population analysis with an EMPP model.
Dr. Csaba Benedek is a scientific advisor with the Machine Perception Research Laboratory at the Institute for Computer Science
and Control (SZTAKI), Eoetvoes Lorand Research Network (ELKH) in Budapest, Hungary, and a professor with the Faculty of Information
Technology and Bionics of the Peter Pazmany Catholic University (PPCU). He obtained his PhD from PPCU in 2008, and his DSc
from the Hungarian of Academy of Sciences (HAS) in 2020. Dr. Benedek has been the president of the Hungarian Image Processing
and Pattern Recognition Society (Kepaf), and the Hungarian Governing Board Member of the International Association for Pattern
Recognition (IAPR). He has been a Senior Member of the IEEE, an Associate Editor of the journal Digital Signal Processing
(Elsevier) and a Guest Editor of Remote Sensing (MDPI). His awards include the Bolyai plaquette from HAS (2019), a Researcher
Acknowledgement from the HAS Secretary-General (2018), the Imreh Csanad plaquette (2019), and the Michelberger Master Award
from the Hungarian Academy of Engineering (2020). In recent years, he has managed various national and international research
projects. His research interests include Bayesian image and point cloud segmentation, object extraction, change detection,
machine learning applications and GIS data analysis.