Neuromorphic vision sensors (NVS) have been recently explored to tackle scenarios where conventional sensors result in high data rate and processing time. This paper presents a hybrid event-frame approach for detecting and tracking objects recorded by a stationary neuromorphic sensor, thereby exploiting the sparse NVS output in a low-power setting for traffic monitoring. Specifically, we propose a hardware efficient processing pipeline that optimizes memory and computational needs. The usage of NVS gives the advantage of rejecting background while it has a unique disadvantage of fragmented objects. To exploit the background removal, we propose an event-based binary image creation that signals presence or absence of events in a frame duration. This reduces memory requirement and enables usage of simple algorithms like median filtering and connected component labeling for denoise and region proposal respectively. To overcome the fragmentation issue, a YOLO-inspired neural network based detector and classifier to merge fragmented region proposals has been proposed. Finally, an overlap based tracker exploiting overlap between detections and tracks is proposed with heuristics to overcome occlusion. The proposed pipeline is evaluated with more than 5 hours of traffic recording spanning three different locations on two different NVS and demonstrate similar performance. Compared to existing event-based feature trackers, our method provides similar accuracy while needing 6 times less computes. To the best of our knowledge, this is the first time a stationary NVS based traffic monitoring solution is extensively compared to simultaneously recorded RGB frame-methods while showing tremendous promise by outperforming state-of-the-art deep learning solutions.
翻译:最近对内向视觉传感器(NVS)进行了探索,以解决传统传感器导致数据率和处理时间高的情况。本文介绍了一种混合事件范围方法,用于探测和跟踪固定神经形态传感器所记录的物体,从而在低功率环境下利用稀少的NVS输出进行交通监测。具体地说,我们提议了一种硬件高效处理管道,优化记忆和计算需求。使用NVS的好处是拒绝背景,而它具有分散物体的独特劣势。为了利用背景清除,我们提议以事件为基础的二进制图像,在框架期间出现或没有事件信号。这减少了对记忆的需求,并使得能够使用中位过滤和连接的部件标签作为固定神经形态和区域提案的简单算法。为了克服支离破碎的问题,我们提议了以YOLO为动力的神经网络,以优化记忆和计算需求。最后,利用探测和轨道之间重叠的基于重叠的跟踪器,我们提议与超导体模型,以克服隐蔽状态。拟议的管道将超过5小时的信号显示在框架内显示流量上进行中位的中位过滤速度,同时显示我们目前不同的跟踪方法。