Abstract
Abstract
Sonar systems are frequently used to classify objects at a distance by using the structure of the echoes of acoustic waves as a proxy for the object’s shape and composition. Traditional synthetic aperture processing is highly effective in solving classification problems when the conditions are favourable but relies on accurate knowledge of the sensor’s trajectory relative to the object being measured. This article provides several new theoretical tools that decouple object classification performance from trajectory estimation in synthetic aperture sonar processing. The key insight is that decoupling the trajectory from classification-relevant information involves factoring a function into the composition of two functions. The article presents several new general topological invariants for smooth functions based on their factorisations over function composition. These invariants specialise to the case when a sonar platform trajectory is deformed by a non-small perturbation. The mathematical results exhibited in this article apply well beyond sonar classification problems. This article is written in a way that supports full mathematical generality.
Publisher
Cambridge University Press (CUP)
Reference56 articles.
1. A Fourier-based motion estimation approach for wide band synthetic aperture sonar
2. [12] Chen, C. , Ni, X. , Bai, Q. & Wang, Y. (2019) A topological regularizer for classifiers via persistent homology. In: AISTATS.
3. Wideband time-reversal imaging of an elastic target in an acoustic waveguide
4. Universal factorizations of quasiperiodic functions
5. [20] Divyabarathi, G. , Shailesh, S. & Judy, M. V. (2020) Survey on deep learning techniques used for classification of underwater sonar images. In: GeographyRN: Nature-Society Studies (Topic).