Quantum Feature Pyramid Gating for Seismic Image Segmentation
Taha Gharaibeh, Jyotsna Sharma

TL;DR
This paper introduces a hybrid quantum-classical segmentation architecture with quantum feature gating, demonstrating improved seismic image segmentation performance on the TGS Salt Identification Challenge.
Contribution
It proposes a novel quantum feature gating method embedded in an encoder-decoder pipeline for seismic segmentation, with extensive evaluation on real seismic data.
Findings
Quantum feature gating improves IoU in seismic segmentation.
Replacing quantum gates with simple addition reduces performance.
Quantum gates as skip-connection attention enhance segmentation results.
Abstract
Accurate salt-body delineation is essential for seismic interpretation because salt structures distort wave propagation, complicate velocity-model building, obscure reservoir geometry, and increase uncertainty in exploration and drilling decisions. Although hybrid quantum-classical models have shown competitive performance on small-scale image-classification tasks, their value for dense, pixel-level geophysical prediction remains largely untested. This work introduces quantum feature gating, a hybrid segmentation architecture that embeds a parameterized quantum circuit (PQC) at feature-fusion points within an encoder-decoder pipeline. A 4-qubit, 2-layer PQC with data re-uploading computes a learned convex combination of lateral and top-down features at each Feature Pyramid Network merge point. A global-average-pooling layer maps encoder features to a fixed 4-dimensional quantum input,…
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