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dc.contributor.advisorMartinovič, Jan
dc.contributor.authorZitzlsberger, Georg
dc.date.accessioned2024-02-09T10:32:52Z
dc.date.available2024-02-09T10:32:52Z
dc.date.issued2023
dc.identifier.otherOSD002
dc.identifier.urihttp://hdl.handle.net/10084/152043
dc.description.abstractRemote sensing driven urban change detection and monitoring has been studied for over five decades. It is applied widely for understanding socio-economic impacts, identifying new settlements, or analyzing trends of urban sprawl. Many methods have evolved to detect such man-made changes and, with the recent advent of Deep Neural Networks (DNNs), have led to a rapid growth of approaches in the past years. The downside of these methods is their dependency on expensive high quality observations that require manual selection and pre-processing. Also adaptability or transfer to different regions and environments imposes non-trivial requirements on the data and methods. These aspects induce limitations in their practicability, scalability, and temporal resolution. In the present work, two supervised methods were introduced to enable urban change monitoring with a high temporal resolution and in-expensive large-scale low- to medium-resolution multi-modal level 1 data. The use of level 1 Synthetic Aperture Radar (SAR) and optical multispectral data required a resiliency of the methods to partial and irregular observations. This was addressed by the use of windowed time series with large but varying amount of observations, which is introduced as deep-temporal remote sensing data. The methods were separated into two stages. First, a DNN was pre-trained with a fully automatic process. It utilized synthetic but noisy labels, derived from the level 1 data, to monitor urban changes in each window. Second, transfer learning was applied to the pre-trained network to customize it for a target location. This was accomplished by providing a smaller set of labels, manually derived from few but publicly available Very High Resolution (VHR) observations. This process only required little manual efforts for the transfer stage through a novel window aggregation method. This simplified labeling still provided convergence during training and improved the overall monitoring performance.en
dc.description.abstractRemote sensing driven urban change detection and monitoring has been studied for over five decades. It is applied widely for understanding socio-economic impacts, identifying new settlements, or analyzing trends of urban sprawl. Many methods have evolved to detect such man-made changes and, with the recent advent of Deep Neural Networks (DNNs), have led to a rapid growth of approaches in the past years. The downside of these methods is their dependency on expensive high quality observations that require manual selection and pre-processing. Also adaptability or transfer to different regions and environments imposes non-trivial requirements on the data and methods. These aspects induce limitations in their practicability, scalability, and temporal resolution. In the present work, two supervised methods were introduced to enable urban change monitoring with a high temporal resolution and in-expensive large-scale low- to medium-resolution multi-modal level 1 data. The use of level 1 Synthetic Aperture Radar (SAR) and optical multispectral data required a resiliency of the methods to partial and irregular observations. This was addressed by the use of windowed time series with large but varying amount of observations, which is introduced as deep-temporal remote sensing data. The methods were separated into two stages. First, a DNN was pre-trained with a fully automatic process. It utilized synthetic but noisy labels, derived from the level 1 data, to monitor urban changes in each window. Second, transfer learning was applied to the pre-trained network to customize it for a target location. This was accomplished by providing a smaller set of labels, manually derived from few but publicly available Very High Resolution (VHR) observations. This process only required little manual efforts for the transfer stage through a novel window aggregation method. This simplified labeling still provided convergence during training and improved the overall monitoring performance.cs
dc.format.extent20548531 bytes
dc.format.mimetypeapplication/pdf
dc.language.isoen
dc.publisherVysoká škola báňská – Technická univerzita Ostravacs
dc.subjectremote sensingen
dc.subjectmulti-modalen
dc.subjecturban change monitoringen
dc.subjectdeep neural networken
dc.subjecttransfer learningen
dc.subjectwindowed time seriesen
dc.subjectremote sensingcs
dc.subjectmulti-modalcs
dc.subjecturban change monitoringcs
dc.subjectdeep neural networkcs
dc.subjecttransfer learningcs
dc.subjectwindowed time seriescs
dc.titleUrban Change Monitoring with Neural Networks and Deep-Temporal Remote Sensing Dataen
dc.title.alternativeSledování změn urbanizovaných území pomocí neuronových sítí a rozsáhlých časových dat dálkového průzkumu Zeměcs
dc.typeDisertační prácecs
dc.contributor.refereeDvorský, Jiří
dc.contributor.refereeŠtych, Přemysl
dc.contributor.refereeBoracchi, Giacomo
dc.date.accepted2023-12-04
dc.thesis.degree-namePh.D.
dc.thesis.degree-levelDoktorský studijní programcs
dc.thesis.degree-grantorVysoká škola báňská – Technická univerzita Ostrava. Univerzitní studijní programycs
dc.description.department96210 - Laboratoř pro náročné datové analýzy a simulacecs
dc.thesis.degree-programVýpočetní vědycs
dc.thesis.degree-branchVýpočetní vědycs
dc.description.resultvyhovělcs
dc.identifier.senderS2790
dc.identifier.thesisZIT0029_USP_P2658_2612V078_2023
dc.rights.accessopenAccess


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