SpectralKAN: Weighted Activation Distribution Kolmogorov-Arnold Network for Hyperspectral Image Change Detection
Yanheng Wang, Xiaohan Yu, Yongsheng Gao, Jianjun Sha, Jian Wang, Shiyong Yan, Kai Qin, Yonggang Zhang, Lianru Gao

TL;DR
SpectralKAN introduces a novel high-dimensional data processing framework combining weighted activation distributions and tensor splitting, significantly enhancing hyperspectral image change detection accuracy and efficiency.
Contribution
The paper proposes SpectralKAN, a new network architecture with weighted activation distribution and multilevel tensor splitting for efficient high-dimensional data analysis.
Findings
Achieves 0.9801 overall accuracy on Farmland dataset.
Uses only 8k parameters and 0.07 M FLOPs, demonstrating high efficiency.
Outperforms existing methods in accuracy and computational cost.
Abstract
Kolmogorov-Arnold networks (KANs) represent data features by learning the activation functions and demonstrate superior accuracy with fewer parameters, FLOPs, GPU memory usage (Memory), shorter training time (TraT), and testing time (TesT) when handling low-dimensional data. However, when applied to high-dimensional data, which contains significant redundant information, the current activation mechanism of KANs leads to unnecessary computations, thereby reducing computational efficiency. KANs require reshaping high-dimensional data into a one-dimensional tensor as input, which inevitably results in the loss of dimensional information. To address these limitations, we propose weighted activation distribution KANs (WKANs), which reduce the frequency of activations per node and distribute node information into different output nodes through weights to avoid extracting redundant…
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