Xin Zeng, Lin Zhang, Zhongqiang Luo, Xingzhong Xiong
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引用次数: 0
摘要
近年来,视觉跟踪面临诸多挑战,卷积神经网络越来越频繁地用于特征提取。层次卷积特征方法(Hierarchical Convolutional Features method,简称HCF)是卷积神经网络在相关滤波跟踪算法中的经典应用之一。但HCF方法存在速度慢的问题。针对这一问题,本文对基线模型更新策略(HCF)进行优化。为了降低模型更新频率,我们设置了区间参数,既节省了时间,又避免了模型漂移的问题,在一定程度上提高了跟踪效果。在OTB2013数据集上与10个优秀的跟踪器进行了比较。实验结果表明,该方法取得了满意的效果。此外,与基线相比,所提方法的跟踪速度也略快。
An Improved Visual Tracking Approach Based on Hierarchical Convolutional Features
In recent years, visual tracking faces numerous challenges, and convolutional neural networks are used more and more frequently to extract features. The Hierarchical Convolutional Features method (HCF for short) is one of the classic applications of Convolutional Neural Network in correlation filter tracking algorithms. But it is a problem that the speed of HCF method is slow. To tackle this problem, this paper optimizes the model update strategy of the baseline (HCF). In order to reduce the model update frequency, we set an interval parameter, which not only saves time, but also avoids the problem of model drift and improves the tracking effects to a certain extent. The proposed method is compared with 10 excellent trackers on the OTB2013 data set. Experimental results indicate that our approach has satisfactory results. In addition, compared with baseline, the tracking speed of the proposed approach is also slightly faster.