Autonomous Driving (AD) related features represent important elements for the next generation of mobile robots and autonomous vehicles focused on increasingly intelligent, autonomous, and interconnected systems. The applications involving the use of these features must provide, by definition, real-time decisions, and this property is key to avoid catastrophic accidents. Moreover, all the decision processes must require low power consumption, to increase the lifetime and autonomy of battery-driven systems. These challenges can be addressed through efficient implementations of Spiking Neural Networks (SNNs) on Neuromorphic Chips and the use of event-based cameras instead of traditional frame-based cameras. In this paper, we present a new SNN-based approach, called LaneSNN, for detecting the lanes marked on the streets using the event-based camera input. We develop four novel SNN models characterized by low complexity and fast response, and train them using an offline supervised learning rule. Afterward, we implement and map the learned SNNs models onto the Intel Loihi Neuromorphic Research Chip. For the loss function, we develop a novel method based on the linear composition of Weighted binary Cross Entropy (WCE) and Mean Squared Error (MSE) measures. Our experimental results show a maximum Intersection over Union (IoU) measure of about 0.62 and very low power consumption of about 1 W. The best IoU is achieved with an SNN implementation that occupies only 36 neurocores on the Loihi processor while providing a low latency of less than 8 ms to recognize an image, thereby enabling real-time performance. The IoU measures provided by our networks are comparable with the state-of-the-art, but at a much low power consumption of 1 W.
翻译:自动驾驶(AD)相关特征代表了下一代移动机器人和自主飞行器的重要元素,其重点是日益智能、自主和相互联系的系统。使用这些特征的应用必须提供定义、实时决定,而这种属性是避免灾难性事故的关键。此外,所有决策程序都必须要求低电耗,以提高电池驱动系统的寿命和自主性。这些挑战可以通过在Neurormophic Chips上高效实施Spiking神经网络(SNNNW)以及使用基于事件的相机,而不是传统的基于框架的相机来应对。在本文中,我们展示了一个新的基于SNNNN的新方法,称为LaneSNNNN,用于利用基于事件的摄像头输入,探测街道上标注的行道。我们开发了四个新的SNNNNM模型,其特点是低复杂和快速反应,随后,我们将学到的SNNNW模型输入到Intel Loi-Nexformore 研究 Chest 功能,我们开发了一个基于网络的直线性结构,而SBIMS-BRO-BRO-CS-BROD 度测量了我们最不甚高的SIME-CS-C-C-S-C-C-C-C-C-C-C-C-Sloevental 度测量测量测量测量测制成一个最慢度的模型的测量测量度测量度测量度测量度测量度测量度测量度测量度测量度测量度测量度测量度测量测量测量测量测量测量测量测量测量测量测量度措施。