WaveMamba:用于高光谱图像分类的空间-光谱小波曼巴

Muhammad Ahmad;Muhammad Usama;Manuel Mazzara;Salvatore Distefano
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摘要

高光谱成像(HSI)已被证明是一种强大的工具,可以在各种应用中捕获详细的光谱和空间信息。尽管深度学习(DL)和Transformer架构在HSI分类方面取得了进步,但计算效率和对大量标记数据的需求等挑战仍然存在。本文介绍了WaveMamba,一种将小波变换与空间-光谱曼巴(SSMamba)结构相结合以增强HSI分类的新方法。WaveMamba在端到端可训练的模型中捕获本地纹理模式和全局上下文关系。然后,通过状态空间架构对基于小波的增强特征进行处理,以模拟空间-光谱关系和时间依赖性。实验结果表明,WaveMamba优于现有模型,在休斯顿大学数据集上的准确率提高了4.5%,在帕维亚大学数据集上的准确率提高了2.0%。
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WaveMamba: Spatial-Spectral Wavelet Mamba for Hyperspectral Image Classification
Hyperspectral imaging (HSI) has proven to be a powerful tool for capturing detailed spectral and spatial information across diverse applications. Despite the advancements in deep learning (DL) and Transformer architectures for HSI classification, challenges such as computational efficiency and the need for extensive labeled data persist. This letter introduces WaveMamba, a novel approach that integrates wavelet transformation with the spatial-spectral Mamba (SSMamba) architecture to enhance HSI classification. WaveMamba captures both local texture patterns and global contextual relationships in an end-to-end trainable model. The Wavelet-based enhanced features are then processed through the state-space architecture to model spatial-spectral relationships and temporal dependencies. The experimental results indicate that WaveMamba surpasses existing models, achieving an accuracy improvement of 4.5% on the University of Houston dataset and a 2.0% increase on the Pavia University dataset.
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