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Multi-target tracking using CNN-based features: CNNMTT

机译:使用基于CNN的功能进行多目标跟踪:CNNMTT

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摘要

In this paper, we focus mainly on designing a Multi-Target Object Tracking algorithm that would produce high-quality trajectories while maintaining low computational costs. Using online association, such features enable this algorithm to be used in applications like autonomous driving and autonomous surveillance. We propose CNN-based, instead of hand-crafted, features to lead to higher accuracies. We also present a novel grouping method for 2-D online environments without prior knowledge of camera parameters and an affinity measure based on the groups maintained in previous frames. Comprehensive evaluations of our algorithm (CNNMTT) on a publicly available and widely used dataset (MOT16) reveal that the CNNMTT method achieves high quality tracking results in comparison to the state of the art while being faster and involving much less computational cost.
机译:在本文中,我们主要集中于设计一种多目标对象跟踪算法,该算法将生成高质量的轨迹,同时保持较低的计算成本。通过使用在线关联,此类功能使该算法可用于自动驾驶和自动监控等应用。我们提出基于CNN的功能,而不是手工制作的功能,以提高准确性。我们还针对二维在线环境提出了一种新颖的分组方法,无需事先了解相机参数,并且不会基于之前帧中维护的组进行亲和力度量。在公开可用且广泛使用的数据集(MOT16)上对我们算法(CNNMTT)的综合评估表明,与现有技术相比,CNNMTT方法可实现高质量的跟踪结果,同时速度更快且计算成本更低。

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