What makes for good multiple object trackers?

Yuqi Zhang, Yongzhen Huang, Liang Wang
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引用次数: 7

Abstract

This paper explores the importance of detection and appearance features for multiple object tracking. Extensive detectors including hand-crafted methods and deep learning methods have been tested. We found in this paper that simply improving detection performance can lead to much better multiple object tracking results. The data association methods used in this paper are Kalman Filter and Hungarian algorithm as proposed in [1]. CNN features and color histogram features are extracted as appearance features to measure similarities between objects. Our experiments show that appearance features can help with data association. We then combine detection and data association together as an overall system. The proposed system can track multiple objects at a speed of 17 fps with high accuracy.
什么是好的多目标跟踪器?
本文探讨了检测和外观特征对多目标跟踪的重要性。包括手工制作方法和深度学习方法在内的广泛检测器已经过测试。我们在本文中发现,简单地提高检测性能可以导致更好的多目标跟踪结果。本文使用的数据关联方法是[1]中提出的Kalman Filter和Hungarian算法。提取CNN特征和颜色直方图特征作为外观特征来衡量物体之间的相似度。我们的实验表明,外观特征有助于数据关联。然后,我们将检测和数据关联作为一个整体系统结合在一起。该系统可以以17 fps的速度跟踪多个目标,并且精度很高。
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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