论文标题
学习交流和纠正姿势错误
Learning to Communicate and Correct Pose Errors
论文作者
论文摘要
学识渊博的通信通过汇总分布式信息使多代理系统更有效。但是,这也使单个代理商可能会收到错误的消息的威胁。在本文中,我们研究了V2Vnet中提出的设置,附近的自动驾驶车辆共同以合作的方式进行对象检测和运动预测。尽管当代理共同解决任务时,尽管姿势噪声的存在迅速减少了增益,但由于沟通依赖于空间转换,因此增益很快就会减少。因此,我们提出了一个新颖的神经推理框架,该框架学会了进行交流,估计潜在的错误,最后是对这些错误达成共识。实验证实,我们提出的框架显着改善了在现实和严重的定位噪声下的多代理自动驾驶感知和运动预测系统的鲁棒性。
Learned communication makes multi-agent systems more effective by aggregating distributed information. However, it also exposes individual agents to the threat of erroneous messages they might receive. In this paper, we study the setting proposed in V2VNet, where nearby self-driving vehicles jointly perform object detection and motion forecasting in a cooperative manner. Despite a huge performance boost when the agents solve the task together, the gain is quickly diminished in the presence of pose noise since the communication relies on spatial transformations. Hence, we propose a novel neural reasoning framework that learns to communicate, to estimate potential errors, and finally, to reach a consensus about those errors. Experiments confirm that our proposed framework significantly improves the robustness of multi-agent self-driving perception and motion forecasting systems under realistic and severe localization noise.