论文标题

通过深层网络中的功能共享的合作激光雷达对象检测

Cooperative LIDAR Object Detection via Feature Sharing in Deep Networks

论文作者

Marvasti, Ehsan Emad, Raftari, Arash, Marvasti, Amir Emad, Fallah, Yaser P., Guo, Rui, Lu, HongSheng

论文摘要

沟通和计算系统的最新进步导致了连接和自动驾驶汽车中情境意识的显着提高。计算高效的神经网络和高速无线车辆网络一直是该改进的主要贡献者。但是,由于感觉和通信系统的固有局限性引起的可伸缩性和可靠性问题仍然是具有挑战性的问题。在本文中,我们旨在通过引入合作对象检测(FS-COD)的特征共享概念来减轻这些局限性的影响。在我们提出的方法中,通过在合作车辆之间共享部分处理的数据,同时保持计算和通信负载之间的平衡,可以更好地了解环境。这种方法与当前的地图共享方法或不可扩展的原始数据共享不同。通过在Volony数据集上的实验来验证所提出的方法的性能。结果表明,所提出的方法比常规的单车对象检测方法具有显着的性能优势。

The recent advancements in communication and computational systems has led to significant improvement of situational awareness in connected and autonomous vehicles. Computationally efficient neural networks and high speed wireless vehicular networks have been some of the main contributors to this improvement. However, scalability and reliability issues caused by inherent limitations of sensory and communication systems are still challenging problems. In this paper, we aim to mitigate the effects of these limitations by introducing the concept of feature sharing for cooperative object detection (FS-COD). In our proposed approach, a better understanding of the environment is achieved by sharing partially processed data between cooperative vehicles while maintaining a balance between computation and communication load. This approach is different from current methods of map sharing, or sharing of raw data which are not scalable. The performance of the proposed approach is verified through experiments on Volony dataset. It is shown that the proposed approach has significant performance superiority over the conventional single-vehicle object detection approaches.

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