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Nonlinear analysis of multi-dimensional signals: local adaptive estimation of complex motion and orientation patterns. (English) Zbl 1272.94007

Dahlhaus, Rainer (ed.) et al., Mathematical methods in signal processing and digital image analysis. Berlin: Springer (ISBN 978-3-540-75631-6/hbk). Springer Complexity, 231-288 (2008).
Summary: We consider the general task of accurately detecting and quantifying orientations in \(n\)-dimensional signals \(s\). The main emphasis will be placed on the estimation of motion, which can be thought of as orientation in spatiotemporal signals. Associated problems such as the optimization of matched kernels for deriving isotropic and highly accurate gradients from the signals, optimal integration of local models, and local model selection will also be addressed.
For the entire collection see [Zbl 1130.68006].

MSC:

94A08 Image processing (compression, reconstruction, etc.) in information and communication theory

Software:

VanHuffel; AWS
Full Text: DOI

References:

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