Multi-view moving objects classification via transfer learning

Jianyun Liu, Yunhong Wang, Zhaoxiang Zhang, Yi Mo
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引用次数: 7

Abstract

Moving objects classification in traffic scene videos is a hot topic in recent years. It has significant meaning to intelligent traffic system by classifying moving traffic objects into pedestrians, motor vehicles, non-motor vehicles etc.. Traditional machine learning approaches make the assumption that source scene objects and target scene objects share same distributions, which does not hold for most occasions. Under this circumstance, large amount of manual labeling for target scene data is needed, which is time and labor consuming. In this paper, we introduce TrAdaBoost, a transfer learning algorithm, to bridge the gap between source and target scene. During training procedure, TrAdaBoost makes full use of the source scene data that is most similar to the target scene data so that only small number of labeled target scene data could help improve the performance significantly. The features used for classification are Histogram of Oriented Gradient features of the appearance based instances. The experiment results show the outstanding performance of the transfer learning method comparing with traditional machine learning algorithm.
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基于迁移学习的多视角运动物体分类
交通场景视频中的运动目标分类是近年来研究的热点问题。将运动交通对象划分为行人、机动车、非机动车等,对智能交通系统具有重要意义。传统的机器学习方法假设源场景对象和目标场景对象共享相同的分布,这在大多数情况下是不成立的。在这种情况下,需要对目标场景数据进行大量的人工标注,耗时耗力。在本文中,我们引入了一种迁移学习算法TrAdaBoost来弥合源场景和目标场景之间的差距。在训练过程中,TrAdaBoost充分利用与目标场景数据最相似的源场景数据,只需要少量标记的目标场景数据就能显著提高性能。用于分类的特征是基于外观实例的定向梯度特征直方图。实验结果表明,与传统的机器学习算法相比,迁移学习方法具有优异的性能。
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