A Study on Efficient Multi-task Networks for Multiple Object Tracking

Xuan-Thuy Vo, T. Tran, Duy-Linh Nguyen, K. Jo
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Abstract

Multiple object tracking involves multi-task learning to handle object detection and data association tasks concurrently. Conventionally, object detection consists of object classification and object localization (e.g., object regression) tasks, and data association is treated as a classification task. However, various tasks can cause inconsistent learning due to that the learning targets of object detection and data association tasks are different. Object detection focuses on positional information of objects while data association requires strong semantic information to identify same object target. Besides, advantageous character of multi-task learning is the correlation between tasks, and adopting such character in learning the networks can result in better generalization performance. However, existing multiple object tracking methods learn this information by treating multi-task branches independently. To understand the behaviours of multi-task networks in multiple object tracking, in this paper, we explore task-dependent representations through empirical experiments and observe that multi-task branches in multiple object tracking are complementary. To better learn such information, we introduce a novel Correlation Estimation (CE) module to estimate the correlation between object classification and bounding box regression based on statistical features of box regression quality. Finally, extensive experiments are conducted on the benchmark dataset MOT17. As a result, our method outperforms state-of-the-art online trackers without requiring additional training datasets.
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多目标跟踪的高效多任务网络研究
多目标跟踪涉及多任务学习,可以同时处理目标检测和数据关联任务。通常,目标检测包括目标分类和目标定位(例如,目标回归)任务,数据关联被视为分类任务。然而,由于对象检测和数据关联任务的学习目标不同,不同的任务会导致学习不一致。目标检测关注的是目标的位置信息,而数据关联需要很强的语义信息来识别相同的目标。此外,多任务学习的优点是任务间的相关性,在学习网络时采用这种特性可以获得更好的泛化性能。然而,现有的多目标跟踪方法通过独立处理多任务分支来学习这些信息。为了理解多任务网络在多目标跟踪中的行为,本文通过实证实验探索任务相关表征,并观察到多目标跟踪中的多任务分支是互补的。为了更好地学习这些信息,我们引入了一种新的Correlation Estimation (CE)模块,基于盒回归质量的统计特征来估计目标分类与边界盒回归之间的相关性。最后,在基准数据集MOT17上进行了大量的实验。因此,我们的方法优于最先进的在线跟踪器,而不需要额外的训练数据集。
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