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On the improvement of foreground–background model-based object tracker

机译:基于前景-背景模型的对象跟踪器的改进

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摘要

In this study, the authors propose two kinds of improvements to a baseline tracker that employs the tracking-by-detection framework. First, they explore different feature spaces by employing features commonly used in object detection to improve the performance of detector in feature space. Second, they propose a robust scale estimation algorithm that estimates the size of the object in the current frame. Their experimental results on the challenging online tracking benchmark-13 dataset show that reduced dimensionality histogram of oriented gradients boosts the performance of the tracker. The proposed scale estimation algorithm provides a significant gain and reduces the failure of the tracker in challenging scenarios. The improved tracker is compared with 13 state-of-the-art trackers. The quantitative and qualitative results show that the performance of the tracker is comparable with the state of the art against initialisation errors, variations in illumination, scale and motion, out-of-plane and in-plane rotations, deformations and low resolution.
机译:在这项研究中,作者对采用跟踪检测框架的基线跟踪器提出了两种改进。首先,他们通过使用对象检测中常用的特征来探索不同的特征空间,以提高特征空间中检测器的性能。其次,他们提出了一种鲁棒的比例估计算法,该算法可以估计当前帧中对象的大小。他们在具有挑战性的在线跟踪基准测试13数据集上的实验结果表明,定向梯度的降维直方图提高了跟踪器的性能。所提出的比例估计算法可提供很大的收益,并减少了在挑战性场景中跟踪器的故障。改进的跟踪器与13个最新的跟踪器进行了比较。定量和定性的结果表明,跟踪器的性能在初始化误差,照明,刻度和运动变化,平面外和平面内旋转,变形和低分辨率方面可与现有技术相媲美。

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