Quantum-Driven Multihead Inland Waterbody Detection With Transformer-Encoded CYGNSS Delay-Doppler Map Data
Chia-Hsiang Lin, Jhao-Ting Lin, Po-Ying Chiu, Shih-Ping Chen, Charles C. H. Lin

TL;DR
This paper introduces a quantum deep learning approach using transformer-encoded delay-Doppler maps from CYGNSS data for high-precision inland waterbody detection, outperforming traditional methods and enabling near-real-time processing.
Contribution
It presents a novel quantum deep network architecture, IWD-QUEEN, combined with a transformer encoding of CYGNSS data for improved waterbody detection accuracy.
Findings
IWD-QUEEN achieves high-precision river texture retrieval.
The method outperforms traditional classification and existing hydrography maps.
Near-real-time processing at millisecond-level per DDM.
Abstract
Inland waterbody detection (IWD) is critical for water resources management and agricultural planning. However, the development of high-fidelity IWD mapping technology remains unresolved. We aim to propose a practical solution based on the easily accessible data, i.e., the delay-Doppler map (DDM) provided by NASA's Cyclone Global Navigation Satellite System (CYGNSS), which facilitates effective estimation of physical parameters on the Earth's surface with high temporal resolution and wide spatial coverage. Specifically, as quantum deep network (QUEEN) has revealed its strong proficiency in addressing classification-like tasks, we encode the DDM using a customized transformer, followed by feeding the transformer-encoded DDM (tDDM) into a highly entangled QUEEN to distinguish whether the tDDM corresponds to a hydrological region. In recent literature, QUEEN has achieved outstanding…
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Taxonomy
TopicsSoil Moisture and Remote Sensing · Flood Risk Assessment and Management · Environmental Monitoring and Data Management
