Fr. 239.00

Unsupervised Computer Vision for Aerospace Systems - Spacecraft Pose Estimation to Infrastructure Health Monitoring

Inglese · Copertina rigida

Spedizione di solito entro 6 a 7 settimane

Descrizione

Ulteriori informazioni

This book addresses perception and monitoring challenges in aerospace systems by employing innovative unsupervised learning techniques, thereby providing solutions for scenarios characterized by limited labelled data or dynamic environments. It explores practical methods such as domain adaptation for cross-modal pose estimation, causal inference for point cloud segmentation, and lightweight vision models optimized for edge computing. Key features include algorithm flowcharts, performance comparison tables, and real-world case studies covering planetary crater detection and spacecraft pose estimation. The integration of generative adversarial networks (GANs) for satellite jitter estimation and multistep adaptation strategies for defect detection offers actionable insights, supported by real industrial datasets, embedded hardware schematics, software code snippets, and optimization guidelines for real-time deployment. Engineers and researchers will obtain tools to enhance robustness across modalities and domains, ensuring generalizability in resource-constrained settings. This book serves as a valuable reference for aerospace engineers, computer vision specialists, and remote sensing practitioners and also empowers aerospace infrastructure inspectors adopting advanced vision technologies.

Sommario

Introduction.- Jitter Estimation and Compensation in Spacecraft System.- Pose Estimation and Tracking for Space Objects.- Unsupervised Domain Adaptation for Autonomous Perception.- Safety Inspection of Aerospace Infrastructure.- Future Directions.

Info autore

Zhaoxiang Zhang received his Ph.D. in 2020 from the Institute of Satellite Technology, School of Astronautics, Harbin Institute of Technology, China. Since 2020, he has been an associate professor at the Institute of Unmanned System Technology, Northwestern Polytechnical University, where his research focuses on unmanned system technology, unsupervised learning, and aerospace image processing. His landmark achievements have been successfully applied to the development of reconnaissance equipment, including a high-altitude UAV, an in-service medium-altitude UAV, and the CW-25 industrial UAV, enhancing reconnaissance and positioning performance as well as improving image interpretation systems.

Riassunto

This book addresses perception and monitoring challenges in aerospace systems by employing innovative unsupervised learning techniques, thereby providing solutions for scenarios characterized by limited labelled data or dynamic environments. It explores practical methods such as domain adaptation for cross-modal pose estimation, causal inference for point cloud segmentation, and lightweight vision models optimized for edge computing. Key features include algorithm flowcharts, performance comparison tables, and real-world case studies covering planetary crater detection and spacecraft pose estimation. The integration of generative adversarial networks (GANs) for satellite jitter estimation and multistep adaptation strategies for defect detection offers actionable insights, supported by real industrial datasets, embedded hardware schematics, software code snippets, and optimization guidelines for real-time deployment. Engineers and researchers will obtain tools to enhance robustness across modalities and domains, ensuring generalizability in resource-constrained settings. This book serves as a valuable reference for aerospace engineers, computer vision specialists, and remote sensing practitioners and also empowers aerospace infrastructure inspectors adopting advanced vision technologies.

Dettagli sul prodotto

Autori Zhaoxiang Zhang
Editore Springer, Berlin
 
Lingue Inglese
Formato Copertina rigida
Pubblicazione 18.09.2025
 
EAN 9789819500222
ISBN 978-981-9500-22-2
Pagine 200
Dimensioni 155 mm x 13 mm x 235 mm
Peso 464 g
Illustrazioni VII, 200 p. 86 illus., 84 illus. in color.
Serie Scientific Computation
Categorie Scienze naturali, medicina, informatica, tecnica > Informatica, EDP > Software applicativo

Künstliche Intelligenz, machine learning, Maschinelles Lernen, Artificial Intelligence, Luft- und Raumfahrttechnik, Astronautik (Raumfahrttechnik), Unsupervised Learning, Computer Vision, Aerospace Technology and Astronautics, causal inference, Domain adaptation, Seepage Detection, Jitter Estimation, Aerospace Support Facilities Monitoring

Recensioni dei clienti

Per questo articolo non c'è ancora nessuna recensione. Scrivi la prima recensione e aiuta gli altri utenti a scegliere.

Scrivi una recensione

Top o flop? Scrivi la tua recensione.

Per i messaggi a CeDe.ch si prega di utilizzare il modulo di contatto.

I campi contrassegnati da * sono obbligatori.

Inviando questo modulo si accetta la nostra dichiarazione protezione dati.