Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

DisentangleFormer: Spatial-Channel Decoupling for Multi-Channel Vision

About

Vision Transformers face a fundamental limitation: standard self-attention jointly processes spatial and channel dimensions, leading to entangled representations that prevent independent modeling of structural and semantic dependencies. This problem is especially pronounced in hyperspectral imaging, from satellite hyperspectral remote sensing to infrared pathology imaging, where channels capture distinct biophysical or biochemical cues. We propose DisentangleFormer, an architecture that achieves robust multi-channel vision representation through principled spatial-channel decoupling. Motivated by information-theoretic principles of decorrelated representation learning, our parallel design enables independent modeling of structural and semantic cues while minimizing redundancy between spatial and channel streams. Our design integrates three core components: (1) Parallel Disentanglement: Independently processes spatial-token and channel-token streams, enabling decorrelated feature learning across spatial and spectral dimensions, (2) Squeezed Token Enhancer: An adaptive calibration module that dynamically fuses spatial and channel streams, and (3) Multi-Scale FFN: complementing global attention with multi-scale local context to capture fine-grained structural and semantic dependencies. Extensive experiments on hyperspectral benchmarks demonstrate that DisentangleFormer achieves state-of-the-art performance, consistently outperforming existing models on Indian Pine, Pavia University, and Houston, the large-scale BigEarthNet remote sensing dataset, as well as an infrared pathology dataset. Moreover, it retains competitive accuracy on ImageNet while reducing computational cost by 17.8% in FLOPs. The code will be made publicly available upon acceptance.

Jiashu Liao, Pietro Li\`o, Marc de Kamps, Duygu Sarikaya• 2025

Related benchmarks

TaskDatasetResultRank
Hyperspectral Image ClassificationPavia University (test)
Average Accuracy (AA)95.81
96
Hyperspectral Image ClassificationIndian Pines (test)
Overall Accuracy (OA)96.11
83
Image ClassificationImageNet-1K
Top-1 Acc80
75
High-Spectral Image ClassificationHouston (test)
OA92.62
5
Multi-Label ClassificationBigEarthNet
AP71.51
5
Infrared Pathology ClassificationBR20832
Accuracy94.94
3
Showing 6 of 6 rows

Other info

Follow for update