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Main Authors: Liu, Hongjun, Zhou, Leyu, Yang, Zijianghao, Han, Rujun, Duan, Shitong, Tang, Kuanjian, Yao, Chao
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2602.17011
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author Liu, Hongjun
Zhou, Leyu
Yang, Zijianghao
Han, Rujun
Duan, Shitong
Tang, Kuanjian
Yao, Chao
author_facet Liu, Hongjun
Zhou, Leyu
Yang, Zijianghao
Han, Rujun
Duan, Shitong
Tang, Kuanjian
Yao, Chao
contents High-density biosignal recordings are critical for neural decoding and clinical monitoring, yet real-world deployments often rely on low-density (LD) montages due to hardware and operational constraints. This motivates spatial super-resolution from LD observations, but heterogeneous dependencies under sparse and noisy measurements often lead to artifact propagation and false non-local correlations. To address this, we propose CAFE, a plug-and-play rollout generation scheme that reconstructs the full montage in geometry-aligned stages. Starting from the LD channels, CAFE first recovers nearby channels and then progressively expands to more distal regions, exploiting reliable local structure before introducing non-local interactions. During training, step-wise supervision is applied over channel groups and teacher forcing with epoch-level scheduled sampling along the group dimension is utilized to reduce exposure bias, enabling parallel computation across steps. At test time, CAFE performs an autoregressive rollout across groups, while remaining plug-and-play by reusing any temporal backbone as the shared predictor. Evaluated on $4$ modalities and $6$ datasets, CAFE demonstrates plug-and-play generality across $3$ backbones (MLP, Conv, Transformer) and achieves consistently better reconstruction than $5$ representative baselines.
format Preprint
id arxiv_https___arxiv_org_abs_2602_17011
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle CAFE: Channel-Autoregressive Factorized Encoding for Robust Biosignal Spatial Super-Resolution
Liu, Hongjun
Zhou, Leyu
Yang, Zijianghao
Han, Rujun
Duan, Shitong
Tang, Kuanjian
Yao, Chao
Multimedia
High-density biosignal recordings are critical for neural decoding and clinical monitoring, yet real-world deployments often rely on low-density (LD) montages due to hardware and operational constraints. This motivates spatial super-resolution from LD observations, but heterogeneous dependencies under sparse and noisy measurements often lead to artifact propagation and false non-local correlations. To address this, we propose CAFE, a plug-and-play rollout generation scheme that reconstructs the full montage in geometry-aligned stages. Starting from the LD channels, CAFE first recovers nearby channels and then progressively expands to more distal regions, exploiting reliable local structure before introducing non-local interactions. During training, step-wise supervision is applied over channel groups and teacher forcing with epoch-level scheduled sampling along the group dimension is utilized to reduce exposure bias, enabling parallel computation across steps. At test time, CAFE performs an autoregressive rollout across groups, while remaining plug-and-play by reusing any temporal backbone as the shared predictor. Evaluated on $4$ modalities and $6$ datasets, CAFE demonstrates plug-and-play generality across $3$ backbones (MLP, Conv, Transformer) and achieves consistently better reconstruction than $5$ representative baselines.
title CAFE: Channel-Autoregressive Factorized Encoding for Robust Biosignal Spatial Super-Resolution
topic Multimedia
url https://arxiv.org/abs/2602.17011