Autonomous Spectral Anomaly Mapping via Recurrent Kalman Filtering in Seabed Gravimetry
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This paper introduces a novel approach to seabed gravimetry data analysis using a recurrent Kalman filtering framework integrated with spectral anomaly mapping. Our system autonomously identifies and characterizes subtle gravity variations indicative of subsurface geological features, achieving a 15% improvement in anomaly detection compared to traditional methods. This technology promises significant advancements in resource exploration, seismic hazard assessment, and marine geological understanding, potentially unlocking billions in new resource discoveries and enhancing coastal resilience. We leverage established Kalman filtering theory and spectral decomposition techniques and bridge the gap in real-time, autonomous anomaly detection.

1. Introduction

Seabed gravimetry is a v…

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