Anti-Occlusion Target Tracking Algorithm Based on Fusion of Deep Features and Handcrafted Features

Wufei Yuan, Weiguang Li, Xingzhong Xiong, Xiaoli Cao
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Abstract

This paper proposes an anti-occlusion target tracking algorithm that integrates deep convolutional features with handcrafted features and adds Average Peak Correlation Energy(APCE). The performance of traditional handcrafted features, such as Histogram of Oriented Gradient(HOG) feature, is unsatisfactory in complex environments. This paper uses deep convolutional features with HOG feature and Color Naming(CN) feature, Fully consider the characteristics of deep convolutional feature with strong representation ability and the characteristics of handcrafted feature extraction is simple. For the target occlusion problem, the APCE is introduced to evaluate the reliability of the tracking target. Once the target is occluded, the filter stops updating the target model and searches the target again. The results tested on OTB-100 video sequence set demonstrates that the improved algorithm has better performance accuracy and success rate than Kernel Correlation Filter(KCF) algorithm in occlusion and motion blur scene.
基于深度特征与手工特征融合的抗遮挡目标跟踪算法
本文提出了一种将深度卷积特征与手工特征相结合,并加入平均峰值相关能(APCE)的抗遮挡目标跟踪算法。传统的手工特征,如直方图定向梯度(HOG)特征,在复杂环境下的性能并不理想。本文将深度卷积特征与HOG特征和颜色命名(CN)特征结合使用,充分考虑了深度卷积特征表征能力强的特点和手工特征提取简单的特点。针对目标遮挡问题,引入APCE来评估跟踪目标的可靠性。一旦目标被遮挡,过滤器停止更新目标模型并再次搜索目标。在OTB-100视频序列集上的测试结果表明,改进算法在遮挡和运动模糊场景下比核相关滤波(KCF)算法具有更高的性能精度和成功率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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