CVMar 27

Learnable Quantum Efficiency Filters for Urban Hyperspectral Segmentation

arXiv:2603.2652835.8h-index: 40
Predicted impact top 82% in CV · last 90 daysOriginality Incremental advance
AI Analysis

This addresses the problem of efficient hyperspectral interpretation for automotive vision systems, offering an incremental improvement with physics-informed constraints.

The paper tackles the challenge of high dimensionality in hyperspectral sensing for urban driving by introducing Learnable Quantum Efficiency (LQE), a physics-inspired dimensionality reduction method that improves semantic segmentation performance, achieving average mIoU gains of 0.45% to 2.45% over conventional methods and 0.81% to 1.56% over learnable methods across three datasets.

Hyperspectral sensing provides rich spectral information for scene understanding in urban driving, but its high dimensionality poses challenges for interpretation and efficient learning. We introduce Learnable Quantum Efficiency (LQE), a physics-inspired, interpretable dimensionality reduction (DR) method that parameterizes smooth high-order spectral response functions that emulate plausible sensor quantum efficiency curves. Unlike conventional methods or unconstrained learnable layers, LQE enforces physically motivated constraints, including a single dominant peak, smooth responses, and bounded bandwidth. This formulation yields a compact spectral representation that preserves discriminative information while remaining fully differentiable and end-to-end trainable within semantic segmentation models (SSMs). We conduct systematic evaluations across three publicly available multi-class hyperspectral urban driving datasets, comparing LQE against six conventional and seven learnable baseline DR methods across six SSMs. Averaged across all SSMs and configurations, LQE achieves the highest average mIoU, improving over conventional methods by 2.45\%, 0.45\%, and 1.04\%, and over learnable methods by 1.18\%, 1.56\%, and 0.81\% on HyKo, HSI-Drive, and Hyperspectral City, respectively. LQE maintains strong parameter efficiency (12--36 parameters compared to 51--22K for competing learnable approaches) and competitive inference latency. Ablation studies show that low-order configurations are optimal, while the learned spectral filters converge to dataset-intrinsic wavelength patterns. These results demonstrate that physics-informed spectral learning can improve both performance and interpretability, providing a principled bridge between hyperspectral perception and data-driven multispectral sensor design for automotive vision systems.

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