Optimized information processing in resource-constrained vision systems. From low-complexity coding to smart sensor networks

Vision systems have become ubiquitous. They are used for traffic monitoring, elderly care, video conferencing, virtual reality, surveillance, smart rooms, home automation, sport games analysis, industrial safety, medical care etc. In most vision systems, the data coming from the visual sensor(s) is...

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Bibliographic Details
Main Author: MORBEE, MARLEEN
Other Authors: Prades Nebot, José
Format: Doctoral Thesis
Language:English
Published: Universitat Politècnica de València 2011
Subjects:
Online Access:http://hdl.handle.net/10251/12126
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spelling ndltd-upv.es-oai-riunet.upv.es-10251-121262020-12-02T20:21:33Z Optimized information processing in resource-constrained vision systems. From low-complexity coding to smart sensor networks MORBEE, MARLEEN Prades Nebot, José Philips, Wilfried Aghajan, Hamid Universitat Politècnica de València. Departamento de Comunicaciones - Departament de Comunicacions Vision systems Distributed video coding Sensor networks Smart cameras Occupancy sensing Resource-constrained systems Computer vision Task assignment Camera selection Image and video processing Image and video compression Wyner-ziv coding Low-complexity Line sensors Information processing TEORIA DE LA SEÑAL Y COMUNICACIONES Vision systems have become ubiquitous. They are used for traffic monitoring, elderly care, video conferencing, virtual reality, surveillance, smart rooms, home automation, sport games analysis, industrial safety, medical care etc. In most vision systems, the data coming from the visual sensor(s) is processed before transmission in order to save communication bandwidth or achieve higher frame rates. The type of data processing needs to be chosen carefully depending on the targeted application, and taking into account the available memory, computational power, energy resources and bandwidth constraints. In this dissertation, we investigate how a vision system should be built under practical constraints. First, this system should be intelligent, such that the right data is extracted from the video source. Second, when processing video data this intelligent vision system should know its own practical limitations, and should try to achieve the best possible output result that lies within its capabilities. We study and improve a wide range of vision systems for a variety of applications, which go together with different types of constraints. First, we present a modulo-PCM-based coding algorithm for applications that demand very low complexity coding and need to preserve some of the advantageous properties of PCM coding (direct processing, random access, rate scalability). Our modulo-PCM coding scheme combines three well-known, simple, source coding strategies: PCM, binning, and interpolative coding. The encoder first analyzes the signal statistics in a very simple way. Then, based on these signal statistics, the encoder simply discards a number of bits of each image sample. The modulo-PCM decoder recovers the removed bits of each sample by using its received bits and side information which is generated by interpolating previous decoded signals. Our algorithm is especially appropriate for image coding. Morbee, M. (2011). Optimized information processing in resource-constrained vision systems. From low-complexity coding to smart sensor networks [Tesis doctoral no publicada]. Universitat Politècnica de València. https://doi.org/10.4995/Thesis/10251/12126 Palancia 2011-10-14 info:eu-repo/semantics/doctoralThesis info:eu-repo/semantics/acceptedVersion http://hdl.handle.net/10251/12126 10.4995/Thesis/10251/12126 eng http://rightsstatements.org/vocab/InC/1.0/ info:eu-repo/semantics/openAccess Universitat Politècnica de València Riunet
collection NDLTD
language English
format Doctoral Thesis
sources NDLTD
topic Vision systems
Distributed video coding
Sensor networks
Smart cameras
Occupancy sensing
Resource-constrained systems
Computer vision
Task assignment
Camera selection
Image and video processing
Image and video compression
Wyner-ziv coding
Low-complexity
Line sensors
Information processing
TEORIA DE LA SEÑAL Y COMUNICACIONES
spellingShingle Vision systems
Distributed video coding
Sensor networks
Smart cameras
Occupancy sensing
Resource-constrained systems
Computer vision
Task assignment
Camera selection
Image and video processing
Image and video compression
Wyner-ziv coding
Low-complexity
Line sensors
Information processing
TEORIA DE LA SEÑAL Y COMUNICACIONES
MORBEE, MARLEEN
Optimized information processing in resource-constrained vision systems. From low-complexity coding to smart sensor networks
description Vision systems have become ubiquitous. They are used for traffic monitoring, elderly care, video conferencing, virtual reality, surveillance, smart rooms, home automation, sport games analysis, industrial safety, medical care etc. In most vision systems, the data coming from the visual sensor(s) is processed before transmission in order to save communication bandwidth or achieve higher frame rates. The type of data processing needs to be chosen carefully depending on the targeted application, and taking into account the available memory, computational power, energy resources and bandwidth constraints. In this dissertation, we investigate how a vision system should be built under practical constraints. First, this system should be intelligent, such that the right data is extracted from the video source. Second, when processing video data this intelligent vision system should know its own practical limitations, and should try to achieve the best possible output result that lies within its capabilities. We study and improve a wide range of vision systems for a variety of applications, which go together with different types of constraints. First, we present a modulo-PCM-based coding algorithm for applications that demand very low complexity coding and need to preserve some of the advantageous properties of PCM coding (direct processing, random access, rate scalability). Our modulo-PCM coding scheme combines three well-known, simple, source coding strategies: PCM, binning, and interpolative coding. The encoder first analyzes the signal statistics in a very simple way. Then, based on these signal statistics, the encoder simply discards a number of bits of each image sample. The modulo-PCM decoder recovers the removed bits of each sample by using its received bits and side information which is generated by interpolating previous decoded signals. Our algorithm is especially appropriate for image coding. === Morbee, M. (2011). Optimized information processing in resource-constrained vision systems. From low-complexity coding to smart sensor networks [Tesis doctoral no publicada]. Universitat Politècnica de València. https://doi.org/10.4995/Thesis/10251/12126 === Palancia
author2 Prades Nebot, José
author_facet Prades Nebot, José
MORBEE, MARLEEN
author MORBEE, MARLEEN
author_sort MORBEE, MARLEEN
title Optimized information processing in resource-constrained vision systems. From low-complexity coding to smart sensor networks
title_short Optimized information processing in resource-constrained vision systems. From low-complexity coding to smart sensor networks
title_full Optimized information processing in resource-constrained vision systems. From low-complexity coding to smart sensor networks
title_fullStr Optimized information processing in resource-constrained vision systems. From low-complexity coding to smart sensor networks
title_full_unstemmed Optimized information processing in resource-constrained vision systems. From low-complexity coding to smart sensor networks
title_sort optimized information processing in resource-constrained vision systems. from low-complexity coding to smart sensor networks
publisher Universitat Politècnica de València
publishDate 2011
url http://hdl.handle.net/10251/12126
work_keys_str_mv AT morbeemarleen optimizedinformationprocessinginresourceconstrainedvisionsystemsfromlowcomplexitycodingtosmartsensornetworks
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