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基于深度特征表达与学习的视觉跟踪算法研究
引用本文:李寰宇, 毕笃彦, 杨源, 查宇飞, 覃兵, 张立朝. 基于深度特征表达与学习的视觉跟踪算法研究[J]. 电子与信息学报, 2015, 37(9): 2033-2039. doi: 10.11999/JEIT150031
作者姓名:李寰宇  毕笃彦  杨源  查宇飞  覃兵  张立朝
作者单位:1.(空军工程大学航空航天工程学院 西安 710038);;2.(空军工程大学空管领航学院 西安 710051)
基金项目:国家自然科学基金(61202339, 61472443)和航空科学基金(20131996013)
摘    要:该文针对视觉跟踪中运动目标的鲁棒性跟踪问题,将深度学习引入视觉跟踪领域,提出一种基于多层卷积滤波特征的目标跟踪算法。该算法利用分层学习得到的主成分分析(PCA)特征向量,对原始图像进行多层卷积滤波,从而提取出图像更深层次的抽象表达,然后利用巴氏距离进行特征相似度匹配估计,进而结合粒子滤波算法实现目标跟踪。结果表明,这种多层卷积滤波提取到的特征能够更好地表达目标,所提跟踪算法对光照变化、遮挡、异面旋转、摄像机抖动都具有很好的不变性,对平面内旋转也具有一定的不变性,在具有此类特点的视频序列上表现出非常好的鲁棒性。

关 键 词:视觉跟踪   深度学习   主成分分析   卷积神经网络   粒子滤波
收稿时间:2015-01-06
修稿时间:2015-04-28

Research on Visual Tracking Algorithm Based on Deep Feature Expression and Learning
Li Huan-yu, Bi Du-yan, Yang Yuan, Zha Yu-fei, Qin Bing, Zhang Li-chao. Research on Visual Tracking Algorithm Based on Deep Feature Expression and Learning[J]. Journal of Electronics & Information Technology, 2015, 37(9): 2033-2039. doi: 10.11999/JEIT150031
Authors:Li Huan-yu  Bi Du-yan  Yang Yuan  Zha Yu-fei  Qin Bing  Zhang Li-chao
Affiliation:2. (College of Aerospace Engineering, Air Force Engineering University, Xi’
Abstract:For the robustness of visual object tracking, a new tracking algorithm based on multi-stage convolution filtering feature is proposed by introducing deep learning into visual tracking. The algorithm uses the Principal Component Analysis (PCA) eigenvectors obtained by stratified learning, to extract the deeper abstract expression of the original image by multi-stage convolutional filtering. Then the Bhattacharyya distance is used to evaluate the similarity among features. Finally, particle filter algorithm is combined to realize target tracking. The result shows that the feature obtained by multi-stage convolution filtering can express target better, the proposed algorithm has a better inflexibility to illumination, covering, rotation, and camera shake, and it exhibits very good robustness in video sequence with such characteristics.
Keywords:Visual tracking  Deep learning  Principal Component Analysis (PCA)  Convolutional neural network  Particle filter
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