EBBIOT: A Low-complexity Tracking Algorithm for Surveillance in IoVT using Stationary Neuromorphic Vision Sensors

Jyotibdha Acharya, Andrés Ussa Caycedo, Vandana Padala, Rishi Raj Sidhu Singh, G. Orchard, Bharath Ramesh, A. Basu
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引用次数: 20

Abstract

In this paper, we present EBBIOT-a novel paradigm for object tracking using stationary neuromorphic vision sensors in low-power sensor nodes for the Internet of Video Things (IoVT). Different from fully event based tracking or fully frame based approaches, we propose a mixed approach where we create event-based binary images (EBBI) that can use memory efficient noise filtering algorithms. We exploit the motion triggering aspect of neuromorphic sensors to generate region proposals based on event density counts with >1000X less memory and computes compared to frame based approaches. We also propose a simple overlap based tracker (OT) with prediction based handling of occlusion. Our overall approach requires 7X less memory and 3X less computations than conventional noise filtering and event based mean shift (EBMS) tracking. Finally, we show that our approach results in significantly higher precision and recall compared to EBMS approach as well as Kalman Filter tracker when evaluated over 1.1 hours of traffic recordings at two different locations.
EBBIOT:一种基于静止神经形态视觉传感器的物联网监控低复杂度跟踪算法
在本文中,我们提出了ebbiot -一种新的范例,用于在视频物联网(IoVT)的低功耗传感器节点中使用静止神经形态视觉传感器进行目标跟踪。与完全基于事件的跟踪或完全基于帧的方法不同,我们提出了一种混合方法,在这种方法中,我们创建了基于事件的二值图像(EBBI),可以使用内存高效的噪声滤波算法。我们利用神经形态传感器的运动触发方面来生成基于事件密度计数的区域建议,与基于帧的方法相比,内存和计算量减少了1000倍以上。我们还提出了一个简单的基于重叠的跟踪器(OT),基于预测的遮挡处理。我们的总体方法需要比传统的噪声滤波和基于事件的平均移位(EBMS)跟踪少7倍的内存和3倍的计算量。最后,我们表明,当评估两个不同地点超过1.1小时的交通记录时,与EBMS方法和卡尔曼滤波跟踪器相比,我们的方法具有更高的精度和召回率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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