CEMLFeb 19, 2014

Analysis of Multibeam SONAR Data using Dissimilarity Representations

arXiv:1402.6636v13 citations
Originality Synthesis-oriented
AI Analysis

This addresses information overload for maritime operators, but appears incremental as it builds on existing visualization methods.

The paper tackles the problem of visualizing high-dimensional sonar data for maritime situation awareness by developing a topographic visualization model that uses dissimilarity representations and accommodates data uncertainty. They demonstrate their approach on a simulated 64-beam sonar dataset with realistic targets.

This paper considers the problem of low-dimensional visualisation of very high dimensional information sources for the purpose of situation awareness in the maritime environment. In response to the requirement for human decision support aids to reduce information overload (and specifically, data amenable to inter-point relative similarity measures) appropriate to the below-water maritime domain, we are investigating a preliminary prototype topographic visualisation model. The focus of the current paper is on the mathematical problem of exploiting a relative dissimilarity representation of signals in a visual informatics mapping model, driven by real-world sonar systems. An independent source model is used to analyse the sonar beams from which a simple probabilistic input model to represent uncertainty is mapped to a latent visualisation space where data uncertainty can be accommodated. The use of euclidean and non-euclidean measures are used and the motivation for future use of non-euclidean measures is made. Concepts are illustrated using a simulated 64 beam weak SNR dataset with realistic sonar targets.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes