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  • About
  • The Global ETD Search service is a free service for researchers to find electronic theses and dissertations. This service is provided by the Networked Digital Library of Theses and Dissertations.
    Our metadata is collected from universities around the world. If you manage a university/consortium/country archive and want to be added, details can be found on the NDLTD website.
1

Einführung in Techniken und Methoden der Multisensor-Datenfusion

Klaus, Ferdinand. January 2004 (has links) (PDF)
Siegen, Univ., Habil.-Schr., 2003. / Computerdatei im Fernzugriff.
2

Aufgabenorientierte Kopplung von Sensoren mit unterschiedlichen Abtasteigenschaften

Robl, Christian. January 2000 (has links) (PDF)
München, Techn. Universiẗat, Diss., 2000.
3

Einführung in Techniken und Methoden der Multisensor-Datenfusion

Klaus, Ferdinand. January 2004 (has links) (PDF)
Siegen, Universiẗat, Habil.-Schr., 2003.
4

Entwicklung und Realisierung eines Sensorsystems auf massenspektrometrischer Basis

Dittmann, Brigitte. January 2000 (has links) (PDF)
München, Techn. Universiẗat, Diss., 2001.
5

Studien zur verbesserten Ausnutzung des Informationsgehaltes von Multisensorsystemen

Rühl, Thorsten. January 2001 (has links) (PDF)
Giessen, Universiẗat, Diss., 2001.
6

A framework in support of structural monitoring by real time kinematic GPS and multisensor data

Ogaja, Clement, Surveying & Spatial Information Systems, Faculty of Engineering, UNSW January 2002 (has links)
Due to structural damages from earthquakes and strong winds, engineers and scientists have focused on performance based design methods and sensors directly measuring relative displacements. Among the monitoring methods being considered include those using Global Positioning System (GPS) technology. However, as the technical feasibility of using GPS for recording relative displacements has been (and is still being) proven, the challenge for users is to determine how to make use of the relative displacements being recorded. This thesis proposes a mathematical framework that supports the use of RTK-GPS and multisensor data for structural monitoring. Its main contributions are as follows: (a) Most of the emerging GPS-based structural monitoring systems consist of GPS receiver arrays (dozens or hundreds deployed on a structure), and the issue of integrity of the GPS data generated must be addressed for such systems. Based on this recognition, a methodology for integrity monitoring using a data redundancy approach has been proposed and tested for a multi-antenna measurement environment. The benefit of this approach is that it verifies the reliability of both the measuring instruments and the processed data contrary to the existing methods that only verifies the reliability of the processed data. (b) For real-time structural monitoring applications, high frequency data ought to be generated. A methodology that can extract, in real-time, deformation parameters from high frequency RTK measurements is proposed. The methodology is tested and shown to be effective for determining the amplitude and frequency of structural dynamics. Thus, it is suitable for the dynamic monitoring of towers, tall buildings and long span suspension bridges. (c) In the overall effort of deformation analysis, large quantities of observations are required, both of causative phenomena (e.g., wind velocity, temperature, pressure), and of response effects (e.g., accelerations, coordinate displacements, tilt, strain, etc.). One of the problems to be circumvented is that of dealing with excess data generated both due to process automation and the large number of instruments employed. This research proposes a methodology based on multivariate statistical process control whose benefit is that excess data generated on-line is reduced, while maintaining a timely response analysis of the GPS data (since they can give direct coordinate results). Based on the above contributions, a demonstrator software system was designed and implemented for the Windows operating system. Tests of the system with datasets from UNSW experiments, the Calgary Tower monitoring experiment in Canada, the Xiamen Bank Building monitoring experiment in China, and the Republic Plaza Building monitoring experiment in Singapore, have shown good results.
7

Entwurf von Fusionsobjekten für den Einsatz in Fahrerassistenzsystemen

Schammer, André. January 2001 (has links)
Stuttgart, Univ., Diplomarb., 2001.
8

Multisensor Multitemporal Fusion for Remote Sensing using Landsat and MODIS Data

Ghannam, Sherin Ghannam 07 December 2017 (has links)
The growing Landsat data archive represents more than four decades of continuous Earth observation. Landsat's role in scientific analysis has increased dramatically in recent years as a result of the open-access policy of the U.S. Geological Survey (USGS). However, this rich data record suffers from relatively low temporal resolution due to the 16-day revisit period of each Landsat satellite. To estimate Landsat images at other points in time, researchers have proposed data-fusion approaches that combine existing Landsat data with images from other sensors, such as MODIS (Moderate Resolution Imaging Spectroradiometer) from the Terra and Aqua satellites. MODIS provides daily revisits, however, with a spatial resolution that is significantly lower than that of Landsat. Fusion of Landsat and MODIS is challenging because of differences in their spatial resolution, band designations, swath width, viewing angle and the noise level. Fusion is even more challenging for heterogeneous landscapes. In the first part of our work, the multiresolution analysis offered by the wavelet transform was explored as a suitable environment for Landsat and MODIS fusion. Our proposed Wavelet-based Spatiotemporal Adaptive Reflectance Fusion Model (WSTARFM) is the first model to merge Landsat and MODIS successfully. It handles the heterogeneity of the landscapes more effectively than the Spatial and Temporal Adaptive Reflectance Fusion Model (STARFM) does. The system has been tested on simulated data and on actual data of two study areas in North Carolina. For a challenging heterogeneous study area near Greensboro, North Carolina, WSTARFM produced results with median R-squared values of 0.98 and 0.95 for the near-infrared band over deciduous forests and developed areas, respectively. Those results were obtained by withholding an actual Landsat image, and comparing it with a predicted version of the same image. These values represent an improvement over results obtained using the well-known STARFM technique. Similar improvements were obtained for the red band. For the second (homogeneous) study area, WSTARFM produced comparable prediction results to STARFM. In the second part of our work, Landsat-MODIS fusion has been explored from the temporal perspective. The fusion is performed on the Landsat and MODIS per-pixel time series. A new Multisensor Adaptive Time Series Fitting Model (MATSFM) is proposed. MATSFM is the first model to use mapped MODIS values to guide the fitting applied to the sparse Landsat time series. MATSFM produced results with median R-squared of 0.98 over the NDVI images of the first heterogeneous study area compared to 0.97 produced by STARFM. For the second study area, MATSFM also produced better prediction accuracy than STARFM. / Ph. D. / The growing Landsat data archive represents more than four decades of continuous Earth observation. Landsat’s role in scientific analysis has increased dramatically in recent years as a result of the open-access policy of the U.S. Geological Survey (USGS). With its spatial resolution of 30 m, Landsat facilitates analysis at a local scale. However, this rich data record suffers from relatively low temporal resolution due to the 16-day revisit period of each Landsat satellite. This long revisit cycle limits the utility of Landsat data for such tasks as tracking rapid changes or investigating intra-seasonal variations. To estimate Landsat images at other points in time, researchers have proposed data-fusion approaches that combine existing Landsat data with images from other sensors, such as MODIS (Moderate Resolution Imaging Spectroradiometer) from the Terra and Aqua satellites. MODIS provides daily revisits, however, with a spatial resolution that is significantly lower than that of Landsat. Landsat-MODIS fusion is a challenging problem due to differences between the two sensors that greatly affect the prediction accuracy over areas having various land cover types. This work presents two Landsat-MODIS fusion models to estimate the unavailable Landsat images from the spatial and temporal perspectives as an attempt to achieve better prediction accuracy especially over heterogeneous areas.
9

Network management in decentralised sensing systems

Utete, Simukai January 1994 (has links)
No description available.
10

On-line trajectory generation in robotics basic concepts for instantaneous reactions to unforeseen (sensor) events

Kröger, Torsten January 2009 (has links)
Zugl.: Braunschweig, Techn. Univ., Diss., 2009

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