对象跟踪方法综述

Zahra Soleimanitaleb, Mohammad Ali Keyvanrad, Ali Jafari
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引用次数: 33

摘要

目标跟踪是计算机视觉中最重要的任务之一,在交通监控、机器人、自动驾驶车辆跟踪等领域有许多实际应用。近年来,由于遮挡、光照变化、快速运动等不同的挑战,该领域的研究仍在继续。本文研究了各种跟踪对象的方法,并提出了一种全面的分类方法,将跟踪方法分为基于特征的、基于分割的、基于估计的和基于学习的四大类,每种方法都有自己的子类别。本文主要关注基于学习的方法,将其分为三类:生成方法、判别方法和强化学习。判别模型的一个子类别是深度学习。由于其高性能,深度学习最近受到了广泛的关注。
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Object Tracking Methods:A Review
Object tracking is one of the most important tasks in computer vision that has many practical applications such as traffic monitoring, robotics, autonomous vehicle tracking, and so on. Different researches have been done in recent years, but because of different challenges such as occlusion, illumination variations, fast motion, etc. researches in this area continues. In this paper, various methods of tracking objects are examined and a comprehensive classification is presented that classified tracking methods into four main categories of feature-based, segmentation-based, estimation-based, and learning-based methods that each of which has its own sub-categories. The main focus of this paper is on learning-based methods, which are classified into three categories of generative methods, discriminative methods, and reinforcement learning. One of the sub-categories of the discriminative model is deep learning. Because of high-performance, deep learning has recently been very much considered.
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