Rif'at Ahdi Ramadhani, G. Jati, W. Jatmiko, Ario Yudo Husodo
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引用次数: 0

摘要

视觉目标跟踪在智能监控系统、智能交通系统、人机交互、行为分析、智能驾驶辅助等多个领域发挥着重要作用。近年来,目标跟踪的研究趋向于提高精度。核化相关滤波(KCF)算法利用频域内的相关性,计算速度快、精度高,被认为是实时目标跟踪的基准算法。然而,基于相关滤波器的跟踪器仍然容易由于不正确的预测而产生模型漂移。这种情况是由不同的外观模型引起的,特别是在快速运动和运动模糊中。我们提出了一种新的基于KCF的跟踪器概念,通过添加置信度评分方案来检测跟踪器的丢失。该跟踪器还引入了自适应多策略观测模型来寻找丢失的目标。我们使用具有快速运动和运动模糊特性的OTB100数据对所提出的方法进行了测试。实验结果表明,该方法能较好地恢复丢失的目标。与现有的跟踪器相比,本文提出的跟踪器的准确率为0.887,成功率为0.895。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive Multi-Strategy Observation of Kernelized Correlation Filter for Visual Object Tracking
Visual object tracking leads a vital role in multiple fields such as intelligent surveillance system, intelligent transportation system, human-computer interaction, behavior analysis, and intelligent driving assistance. In recent years, research of object tracking tends to focus on improving accuracy. Kernelized Correlation Filter (KCF) is considered as a baseline algorithm for real-time object tracking in term of high computation speed and accuracy by using correlation efficiently in the Frequency domain. However, correlation filter-based tracker is still prone to model drift due to incorrect predictions. This condition caused by varied appearance model especially in fast motion and motion blur. We proposed a new concept of KCF based tracker by adding confidence score scheme to detect tracker loss. Our tracker also introduces observation model with adaptive multi-strategy to find the lost target. We test the proposed method using OTB100 data that has strong characteristics in fast motion and motion blur. The result demonstrates that the proposed method was capable of recovering the lost target. The proposed tracker achieves better performance compared to the existing tracker in term of 0.887 in accuracy and 0.895 success rate.
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