CATNet:用于协同感知的协作对齐与转换网络 / CATNet: Collaborative Alignment and Transformation Network for Cooperative Perception
1️⃣ 一句话总结
这篇论文提出了一个名为CATNet的自适应补偿框架,通过同步异步数据、抑制噪声和动态选择关键特征,有效解决了多智能体协同感知中因高延迟和噪声干扰导致的信息融合难题,显著提升了复杂交通场景下的感知鲁棒性。
Cooperative perception significantly enhances scene understanding by integrating complementary information from diverse agents. However, existing research often overlooks critical challenges inherent in real-world multi-source data integration, specifically high temporal latency and multi-source noise. To address these practical limitations, we propose Collaborative Alignment and Transformation Network (CATNet), an adaptive compensation framework that resolves temporal latency and noise interference in multi-agent systems. Our key innovations can be summarized in three aspects. First, we introduce a Spatio-Temporal Recurrent Synchronization (STSync) that aligns asynchronous feature streams via adjacent-frame differential modeling, establishing a temporal-spatially unified representation space. Second, we design a Dual-Branch Wavelet Enhanced Denoiser (WTDen) that suppresses global noise and reconstructs localized feature distortions within aligned representations. Third, we construct an Adaptive Feature Selector (AdpSel) that dynamically focuses on critical perceptual features for robust fusion. Extensive experiments on multiple datasets demonstrate that CATNet consistently outperforms existing methods under complex traffic conditions, proving its superior robustness and adaptability.
CATNet:用于协同感知的协作对齐与转换网络 / CATNet: Collaborative Alignment and Transformation Network for Cooperative Perception
这篇论文提出了一个名为CATNet的自适应补偿框架,通过同步异步数据、抑制噪声和动态选择关键特征,有效解决了多智能体协同感知中因高延迟和噪声干扰导致的信息融合难题,显著提升了复杂交通场景下的感知鲁棒性。
源自 arXiv: 2603.05255