Event-based vision has been rapidly growing in recent years justified by the unique characteristics it presents such as its high temporal resolutions (~1us), high dynamic range (>120dB), and output latency of only a few microseconds. This work further explores a hybrid, multi-modal, approach for object detection and tracking that leverages state-of-the-art frame-based detectors complemented by hand-crafted event-based methods to improve the overall tracking performance with minimal computational overhead. The methods presented include event-based bounding box (BB) refinement that improves the precision of the resulting BBs, as well as a continuous event-based object detection method, to recover missed detections and generate inter-frame detections that enable a high-temporal-resolution tracking output. The advantages of these methods are quantitatively verified by an ablation study using the higher order tracking accuracy (HOTA) metric. Results show significant performance gains resembled by an improvement in the HOTA from 56.6%, using only frames, to 64.1% and 64.9%, for the event and edge-based mask configurations combined with the two methods proposed, at the baseline framerate of 24Hz. Likewise, incorporating these methods with the same configurations has improved HOTA from 52.5% to 63.1%, and from 51.3% to 60.2% at the high-temporal-resolution tracking rate of 384Hz. Finally, a validation experiment is conducted to analyze the real-world single-object tracking performance using high-speed LiDAR. Empirical evidence shows that our approaches provide significant advantages compared to using frame-based object detectors at the baseline framerate of 24Hz and higher tracking rates of up to 500Hz.
翻译:近几年来,基于事件的设想得到了快速增长,原因是它呈现了500个独特的特征,如高时间分辨率(~1us)、高动态范围(>120dB)和仅几微秒的输出延迟度。这项工作进一步探索了一种混合的、多模式的物体探测和跟踪方法,该方法利用以手工制作的事件为基础的方法来提高以最低计算间接费用为基础的总体跟踪性能,从而在最近几年里利用最先进的基于框架的探测器来提高总体跟踪性能。提出的方法包括基于事件的约束框(BBB)的改进,以提高由此产生的BBB的精确度,以及基于事件的连续的物体探测方法,以恢复未发现和生成能够高时分辨率跟踪输出的跨框架检测。这些方法的优点通过使用更高订单跟踪准确性能(HTOTA)的仪算法进行定量核查。结果显示,与HOHTA相比,从56.6%,仅使用框架,到64.1%和64.9%的基于事件和边缘的基底值的基底值的基数框架,与使用更新的ROA.%的直径直径跟踪方法,在基线中,这些基底比基底的LIH.1%至24的基底的基底的基底的基数率,比比基底基底的基底的对5。