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多特征融合的视频目标深度跟踪
引用本文:钱小燕,张代浩,张艳琳.多特征融合的视频目标深度跟踪[J].科学技术与工程,2019,19(7).
作者姓名:钱小燕  张代浩  张艳琳
作者单位:南京航空航天大学民航学院,南京,210000;南京航空航天大学民航学院,南京,210000;南京航空航天大学民航学院,南京,210000
基金项目:国家自然科学基金项目(面上项目,重点项目,重大项目)
摘    要:针对现有基于卷积神经网络跟踪中需要大量离线训练以及在线更新耗时的问题,提出了一种多特征融合的视频目标卷积跟踪算法。算法首先设计了一种浅层前向自学习卷积网络提取目标候选区域的局部卷积特征;然后计算融合了空间信息的颜色直方图特征;在此基础上,采用归一化加权方法在全连接层融合卷积特征和全局颜色特征形成目标的表观描述;最后基于粒子滤波算法,通过计算目标模板与候选目标之间的相似度,估计目标位置。采用OTB-2013公开测试集验证所提跟踪算法的性能,与8种主流目标跟踪算法进行了分析对比。实验结果表明,本文算法的目标跟踪精度和跟踪成功率在多种场景下取得了不错的性能,在保证跟踪精确率的前提下,跟踪鲁棒性优于其他算法。可见提出的多特征融合的卷积跟踪算法通过提取所跟踪视频的自身特征生成卷积器而无需进行大量离线训练,且与手动特征进行融合增强了目标的表达能力,这种策略具有一定的借鉴性。

关 键 词:视频目标跟踪  卷积滤波  多特征融合  粒子滤波  颜色直方图
收稿时间:2018/10/17 0:00:00
修稿时间:2018/12/13 0:00:00

Convolutional Object Tracking by Multi-feature Fusion
Qian Xiaoyan,and.Convolutional Object Tracking by Multi-feature Fusion[J].Science Technology and Engineering,2019,19(7).
Authors:Qian Xiaoyan  and
Institution:Nanjing University of Aeronautics and Astronautics,,
Abstract:For the problems that current convolutional neural network based tracking needs time-consuming off-line training and online updating is difficult, a convolutional tracking algorithm based on multi-feature fusion is proposed. First, a narrow feed-forward convolutional network is designed to extract the local deep features. Then, the color histogram is calculated combining with the space distribution. These two types of features are connected in the full layer with normalization operation. Finally, particle filter is applied to estimate the target location. The performance of the proposed tracking algorithm is verified using public dataset OTB-2013. The objective and subjective evaluations show that the algorithm performs well in several challenging scenes. The robustness of the proposed algorithm is superior to that of state-of-art algorithms under the premise of ensuring the tracking accuracy. The fusion strategy can be used and expanded when difficult types of features are adopted.
Keywords:Visual object tracking  Convolutional filtering  Multi-feature fusion  Particle filter  Color histogram
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