Neuromorphic vision or event vision is an advanced vision technology, where in contrast to the visible camera that outputs pixels, the event vision generates neuromorphic events every time there is a brightness change which exceeds a specific threshold in the field of view (FOV). This study focuses on leveraging neuromorphic event data for roadside object detection. This is a proof of concept towards building artificial intelligence (AI) based pipelines which can be used for forward perception systems for advanced vehicular applications. The focus is on building efficient state-of-the-art object detection networks with better inference results for fast-moving forward perception using an event camera. In this article, the event-simulated A2D2 dataset is manually annotated and trained on two different YOLOv5 networks (small and large variants). To further assess its robustness, single model testing and ensemble model testing are carried out.
翻译:神经形态视觉或事件视觉是一种先进的视觉技术,与能显示输出像素的可见相机相反,事件视觉每次在视野(FOV)领域出现亮度变化超过特定阈值时都会产生神经形态事件。本研究的重点是利用神经形态事件数据来探测路边物体。这是建立人工智能(AI)管道的概念的证明,可用于先进的车辆应用的前视系统。重点是建立高效的最新物体探测网络,利用事件相机更好地推断快速移动前视结果。在本篇文章中,对事件模拟的A2D2数据集进行了人工附加说明,并在两个不同的YOLOv5网络(小型和大型变体)上进行了培训。为了进一步评估其坚固性,还进行了单一模型测试和组合模型测试。