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Variable scale and anti-occlusion object tracking method with multiple feature integration

机译:具有多个特征集成的可变量表和防闭锁对象跟踪方法

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Scale estimation and occlusion detection are challenging problems in object tracking. Most existing methods fail to handle scale variations and occlusion in complex video sequences. This paper presents a novel approach for robust scale estimation with multi-feature integration in a tracking framework, and extract histogram of oriented lines (HOL) feature and color-naming (CN) feature enhance description ability of the target appearance. The proposed approach works by learning discriminative correlation filters based on a scale pyramid representation. We learn filters for translation and scale estimation respectively. Then, occlusion detection is discriminated by Bhattacharyya distance block matching method based on color histogram, which determines whether to update the position learning factor and scale learning factor. Both quantitative and qualitative evaluations are performed to validate our approach. The extensive empirical evaluations on the benchmark dataset demonstrate that the proposed method meets the requirement that accurately tracking the target in complex scenes under different challenge factors, which shows high robust in complex scenes such as the target scale variations and occlusion.
机译:规模估计和遮挡检测是对象跟踪中的挑战问题。大多数现有方法无法处理复杂视频序列中的比例变化和闭塞。本文提出了一种具有跟踪框架中的多特征集成的鲁棒量表估计的新方法,提取面向线(HOL)特征和颜色命名(CN)的直方图,具有目标外观的描述能力。所提出的方法是通过基于尺度金字塔代表学习鉴别相关滤波器的方法。我们分别学习过滤和尺度估计的过滤器。然后,通过基于颜色直方图的Bhattacharyya距离块匹配方法区分遮挡检测,该方法确定是否更新位置学习因子和比例学习因子。进行定量和定性评估,以验证我们的方法。基准数据集上的广泛经验评估表明,该方法符合要求在不同挑战因子下准确地跟踪复杂场景中目标的要求,这在诸如目标规模变化和遮挡等复杂场景中显示出高强度。

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