Электронная книга: Séverine Dubuisson «Tracking with Particle Filter for High-dimensional Observation and State Spaces»
This title concerns the use of a particle filter framework to track objects defined in high-dimensional state-spaces using high-dimensional observation spaces. Current tracking applications require us to consider complex models for objects (articulated objects, multiple objects, multiple fragments, etc.) as well as multiple kinds of information (multiple cameras, multiple modalities, etc.). This book presents some recent research that considers the main bottleneck of particle filtering frameworks (high dimensional state spaces) for tracking in such difficult conditions.
Издательство: "John Wiley&Sons Limited"
ISBN: 9781119053910 электронная книга Купить за 7563.41 руб и скачать на Litres
Купить за 7563.41 руб и скачать на Litres
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