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Autores principales: Li, Yang, Yuan, Quan, Luo, Guiyang, Fu, Xiaoyuan, Zhu, Xuanhan, Yang, Yujia, Pan, Rui, Li, Jinglin
Formato: Preprint
Publicado: 2024
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Acceso en línea:https://arxiv.org/abs/2409.07714
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author Li, Yang
Yuan, Quan
Luo, Guiyang
Fu, Xiaoyuan
Zhu, Xuanhan
Yang, Yujia
Pan, Rui
Li, Jinglin
author_facet Li, Yang
Yuan, Quan
Luo, Guiyang
Fu, Xiaoyuan
Zhu, Xuanhan
Yang, Yujia
Pan, Rui
Li, Jinglin
contents By sharing complementary perceptual information, multi-agent collaborative perception fosters a deeper understanding of the environment. Recent studies on collaborative perception mostly utilize CNNs or Transformers to learn feature representation and fusion in the spatial dimension, which struggle to handle long-range spatial-temporal features under limited computing and communication resources. Holistically modeling the dependencies over extensive spatial areas and extended temporal frames is crucial to enhancing feature quality. To this end, we propose a resource efficient cross-agent spatial-temporal collaborative state space model (SSM), named CollaMamba. Initially, we construct a foundational backbone network based on spatial SSM. This backbone adeptly captures positional causal dependencies from both single-agent and cross-agent views, yielding compact and comprehensive intermediate features while maintaining linear complexity. Furthermore, we devise a history-aware feature boosting module based on temporal SSM, extracting contextual cues from extended historical frames to refine vague features while preserving low overhead. Extensive experiments across several datasets demonstrate that CollaMamba outperforms state-of-the-art methods, achieving higher model accuracy while reducing computational and communication overhead by up to 71.9% and 1/64, respectively. This work pioneers the exploration of the Mamba's potential in collaborative perception. The source code will be made available.
format Preprint
id arxiv_https___arxiv_org_abs_2409_07714
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle CollaMamba: Efficient Collaborative Perception with Cross-Agent Spatial-Temporal State Space Model
Li, Yang
Yuan, Quan
Luo, Guiyang
Fu, Xiaoyuan
Zhu, Xuanhan
Yang, Yujia
Pan, Rui
Li, Jinglin
Computer Vision and Pattern Recognition
Multiagent Systems
By sharing complementary perceptual information, multi-agent collaborative perception fosters a deeper understanding of the environment. Recent studies on collaborative perception mostly utilize CNNs or Transformers to learn feature representation and fusion in the spatial dimension, which struggle to handle long-range spatial-temporal features under limited computing and communication resources. Holistically modeling the dependencies over extensive spatial areas and extended temporal frames is crucial to enhancing feature quality. To this end, we propose a resource efficient cross-agent spatial-temporal collaborative state space model (SSM), named CollaMamba. Initially, we construct a foundational backbone network based on spatial SSM. This backbone adeptly captures positional causal dependencies from both single-agent and cross-agent views, yielding compact and comprehensive intermediate features while maintaining linear complexity. Furthermore, we devise a history-aware feature boosting module based on temporal SSM, extracting contextual cues from extended historical frames to refine vague features while preserving low overhead. Extensive experiments across several datasets demonstrate that CollaMamba outperforms state-of-the-art methods, achieving higher model accuracy while reducing computational and communication overhead by up to 71.9% and 1/64, respectively. This work pioneers the exploration of the Mamba's potential in collaborative perception. The source code will be made available.
title CollaMamba: Efficient Collaborative Perception with Cross-Agent Spatial-Temporal State Space Model
topic Computer Vision and Pattern Recognition
Multiagent Systems
url https://arxiv.org/abs/2409.07714