基于掩蔽中心点扭曲损失的弱监督多目标跟踪

Sungjoon Yoon, Kyujin Shim, Kayoung Park, Changick Kim
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引用次数: 1

摘要

多目标跟踪(MOT)是计算机视觉领域的一门热门学科,具有广泛的应用领域,旨在检测和跟踪输入视频中的多个目标。然而,最近基于学习的MOT方法需要对训练过程中使用的每一帧的边界框和每个对象的ID进行强监督,这导致获得标记数据的成本增加。在本文中,我们提出了一个弱监督的MOT框架,该框架能够在没有对象ID地面真值标签的情况下对多个对象进行准确跟踪。我们的模型仅使用边界框信息进行训练,该信息带有一种新颖的掩盖扭曲损失,该扭曲损失驱动网络间接学习如何通过视频跟踪对象。具体来说,当前帧中的有效对象中心点被预测的偏移向量扭曲,并强制与前一帧中的有效对象中心点相等。通过这种方法,我们获得了与最先进的完全监督MOT模型相当的MOT精度,该模型在MOT17数据集上使用边界框和对象ID作为地面真值标签。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Weakly-Supervised Multiple Object Tracking Via A Masked Center Point Warping Loss
Multiple object tracking (MOT), a popular subject in computer vision with broad application areas, aims to detect and track multiple objects across an input video. However, recent learning-based MOT methods require strong supervision on both the bounding box and the ID of each object for every frame used during training, which induces a heightened cost for obtaining labeled data. In this paper, we propose a weakly-supervised MOT framework that enables the accurate tracking of multiple objects while being trained without object ID ground truth labels. Our model is trained only with the bounding box information with a novel masked warping loss that drives the network to indirectly learn how to track objects through a video. Specifically, valid object center points in the current frame are warped with the predicted offset vector and enforced to be equal to the valid object center points in the previous frame. With this approach, we obtain an MOT accuracy on par with those of the state-of-the-art fully supervised MOT models, which use both the bounding boxes and object ID as ground truth labels, on the MOT17 dataset.
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