Deep learning has been widely used in the perception (e.g., 3D object detection) of intelligent vehicle driving. Due to the beneficial Vehicle-to-Vehicle (V2V) communication, the deep learning based features from other agents can be shared to the ego vehicle so as to improve the perception of the ego vehicle. It is named as Cooperative Perception in the V2V research, whose algorithms have been dramatically advanced recently. However, all the existing cooperative perception algorithms assume the ideal V2V communication without considering the possible lossy shared features because of the Lossy Communication (LC) which is common in the complex real-world driving scenarios. In this paper, we first study the side effect (e.g., detection performance drop) by the lossy communication in the V2V Cooperative Perception, and then we propose a novel intermediate LC-aware feature fusion method to relieve the side effect of lossy communication by a LC-aware Repair Network (LCRN) and enhance the interaction between the ego vehicle and other vehicles by a specially designed V2V Attention Module (V2VAM) including intra-vehicle attention of ego vehicle and uncertainty-aware inter-vehicle attention. The extensive experiment on the public cooperative perception dataset OPV2V (based on digital-twin CARLA simulator) demonstrates that the proposed method is quite effective for the cooperative point cloud based 3D object detection under lossy V2V communication.
翻译:在智能车辆驾驶的感知(如3D物体探测)中,广泛使用了深层次的学习方法。由于车辆到飞行器(V2V)的有益通信,其他代理商的深层次学习基础特征可以与自我驱动器共享,从而改进自我驱动器的感知。在V2V研究中,它被命名为合作认知,其算法最近得到大幅提高。然而,所有现有的合作认知算法都假定了理想的V2V通信,而没有考虑到由于在复杂的真实世界驱动情景中常见的Lossy通信(LLLL)而可能丢失的共享特征。在本文中,我们首先研究V2V2合作认知器丢失通信的副作用(例如检测性下降),以便改善自我驱动器的自我驱动器的认知。我们首先研究V2V2V2天线通信(LCRN)系统(LCRCR)系统(V2VVV)系统(V2VVVV)特殊设计的自我识别模块(V2D)系统(V2D)系统内部检测工具系统(OL)系统内部对车辆自我识别工具的大规模数据识别和不确定性的注意。