CVFeb 21, 2025

An ocean front detection and tracking algorithm

arXiv:2502.15250v41 citationsh-index: 1Has Code
Originality Incremental advance
AI Analysis

This work addresses limitations in oceanographic research by providing a more accurate and reproducible method for detecting and tracking ocean fronts, though it is incremental as it builds on prior techniques.

The paper tackled the problem of ocean front detection by proposing the BFDT-MSA framework, which reduced over-detection by 73% compared to existing methods and achieved improved intensity, continuity, and spatiotemporal coherence in global SST data.

Existing ocean front detection methods--including histogram-based variance analysis, Lyapunov exponent, gradient thresholding, and machine learning--suffer from critical limitations: discontinuous outputs, over-detection, reliance on single-threshold decisions, and lack of open-source implementations. To address these challenges, this paper proposes the Bayesian Front Detection and Tracking framework with Metric Space Analysis (BFDT-MSA). The framework introduces three innovations: (1) a Bayesian decision mechanism that integrates gradient priors and field operators to eliminate manual threshold sensitivity; (2) morphological refinement algorithms for merging fragmented fronts, deleting spurious rings, and thinning frontal zones to pixel-level accuracy; and (3) a novel metric space definition for temporal front tracking, enabling systematic analysis of front evolution. Validated on global SST data (2022--2024), BFDT-MSA reduces over-detection by $73\%$ compared to histogram-based methods while achieving superior intensity ($0.16^\circ$C/km), continuity, and spatiotemporal coherence. The open-source release bridges a critical gap in reproducible oceanographic research.

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