3D Fourier-based Global Feature Extraction for Hyperspectral Image Classification
arXiv cs.CV / 3/18/2026
📰 NewsIdeas & Deep AnalysisModels & Research
Key Points
- The paper introduces HGFNet, a Hybrid GFNet architecture that combines localized 3D convolutional feature extraction with frequency-domain global filtering for hyperspectral image classification.
- It proposes three frequency transforms (Spectral Fourier Transform, Spatial Fourier Transform, and Spatial-Spatial Fourier Transform) to model spectral and spatial dependencies comprehensively.
- The architecture uses 3D convolutional layers for local spatial-spectral structures and Fourier-based modules for long-range dependencies and noise suppression.
- To handle class imbalance in hyperspectral data, it introduces Adaptive Focal Loss that dynamically adjusts class-wise focusing and weighting.
- The approach also addresses scalability concerns of transformer-based models by leveraging FFT-based global filtering as an efficient alternative.
Related Articles
Day 10: 230 Sessions of Hustle and It Comes Down to One Person Reading a Document
Dev.to

5 Dangerous Lies Behind Viral AI Coding Demos That Break in Production
Dev.to
Two bots, one confused server: what Nimbus revealed about AI agent identity
Dev.to

OpenTelemetry just standardized LLM tracing. Here's what it actually looks like in code.
Dev.to
PIXIU: A Large Language Model, Instruction Data and Evaluation Benchmark forFinance
Dev.to