基于多模态虚实融合的协同感知变压器

Hui Zhang, Guiyang Luo, Yuanzhouhan Cao, Yi Jin, Yidong Li
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引用次数: 3

摘要

汽车智能化、网联化已成为未来汽车产业发展的必然趋势。现有的智能网联汽车依靠单智能体来完成基本感知,在处理小而远的物体等复杂交通场景下的准确识别和定位问题上仍然薄弱。为了解决这个问题,我们提出了一个多模型的虚拟-真实融合变压器用于协同感知。具体而言,为了获得RGB图像和LiDAR点云的互补信息,我们提出了多模型虚实融合(MVRF)方法,该方法生成虚拟点并补偿稀疏位置上点信息的缺失。在此基础上,构建了异构图注意网络(HGAN)来捕捉智能体之间的交互,并自适应地融合多个智能体的特征。HGAN包含一系列的编码器层,每一层都有一个异构的智能体间注意模块和一个多尺度的自注意模块,这激励着人们根据不同的智能体类型学习不同的关系,同时捕获全局和局部的空间注意。大量的实验表明,与现有的方法相比,该方法具有更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-Modal Virtual-Real Fusion based Transformer for Collaborative Perception
Automobile intelligence and networking have become the inevitable trend in the future development of the automotive industry. Existing intelligent and connected vehicles rely on single-agent intelligence to perform the basic perception, which is still weak in dealing with the problem of accurate recognition and positioning in complex traffic scenes such as small and far away objects. To tackle this issue, we propose a multi-model virtual-real fusion Transformer for collaborative perception. Specifically, to possess the complementary information from both RGB images and LiDAR point clouds, we propose the multi-model virtual-real fusion (MVRF) method, which generates virtual points and compensates for the lack of point information on sparse locations. Furthermore, the heterogeneous graph attention network (HGAN) is constructed to capture the inter-agent interaction and adaptively incorporate multiple agents’ features. The HGAN contains a series of encoder layers, each of which has a heterogeneous inter-agent attention module and a multi-scale self-attention module, which motivates to learn different relationships based on various agents’ types and simultaneously capture the global and local spatial attention. Extensive experiments demonstrate that the proposed method gains superior performance as compared with state-of-the-art methods.
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