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Main Authors: Zhou, Xi, Huang, Tao, Han, Qing-Long, Abbas, Rana, Azghadi, Mostafa Rahimi
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2605.01888
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author Zhou, Xi
Huang, Tao
Han, Qing-Long
Abbas, Rana
Azghadi, Mostafa Rahimi
author_facet Zhou, Xi
Huang, Tao
Han, Qing-Long
Abbas, Rana
Azghadi, Mostafa Rahimi
contents Accurate 3D object detection is essential for ensuring the safety of autonomous vehicles. Cooperative perception, which leverages vehicle-to-everything (V2X) communication to share perceptual data, enhances detection but is vulnerable to channel impairments, such as noise, fading, and interference. To strengthen the reliability of intelligent transportation systems, this work improves the robustness of V2X cooperative perception under communication conditions that reflect common channel impairments. This paper proposes an Adaptive Feature Fusion Transformer (AFFormer), a Transformer-based framework that mitigates the adverse effects of corrupted features by modeling temporal, inter-agent, and spatial correlations. AFFormer introduces three key modules: Multi-Agent and Temporal Aggregation for context-aware fusion across agents and over time, Dual Spatial Attention for efficient modeling of spatial dependencies, and Uncertainty-Guided Fusion for entropy-driven refinement of fused features. A teacher-student knowledge distillation strategy further enhances robustness by aligning fused features with reliable early-collaboration supervision. AFFormer is validated on the V2XSet and DAIR-V2X datasets, where it consistently outperforms existing methods under both ideal and impaired communication conditions, demonstrating improved robustness to communication-induced feature degradation while maintaining a competitive efficiency-accuracy trade-off.
format Preprint
id arxiv_https___arxiv_org_abs_2605_01888
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle AFFormer: Adaptive Feature Fusion Transformer for V2X Cooperative Perception under Channel Impairments
Zhou, Xi
Huang, Tao
Han, Qing-Long
Abbas, Rana
Azghadi, Mostafa Rahimi
Computer Vision and Pattern Recognition
Artificial Intelligence
Accurate 3D object detection is essential for ensuring the safety of autonomous vehicles. Cooperative perception, which leverages vehicle-to-everything (V2X) communication to share perceptual data, enhances detection but is vulnerable to channel impairments, such as noise, fading, and interference. To strengthen the reliability of intelligent transportation systems, this work improves the robustness of V2X cooperative perception under communication conditions that reflect common channel impairments. This paper proposes an Adaptive Feature Fusion Transformer (AFFormer), a Transformer-based framework that mitigates the adverse effects of corrupted features by modeling temporal, inter-agent, and spatial correlations. AFFormer introduces three key modules: Multi-Agent and Temporal Aggregation for context-aware fusion across agents and over time, Dual Spatial Attention for efficient modeling of spatial dependencies, and Uncertainty-Guided Fusion for entropy-driven refinement of fused features. A teacher-student knowledge distillation strategy further enhances robustness by aligning fused features with reliable early-collaboration supervision. AFFormer is validated on the V2XSet and DAIR-V2X datasets, where it consistently outperforms existing methods under both ideal and impaired communication conditions, demonstrating improved robustness to communication-induced feature degradation while maintaining a competitive efficiency-accuracy trade-off.
title AFFormer: Adaptive Feature Fusion Transformer for V2X Cooperative Perception under Channel Impairments
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2605.01888