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Research of Moving Target Tracking Technology Based on LRCN

机译:基于LRCN的运动目标跟踪技术研究

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摘要

Moving target tracking is a hot spot in computer vision in recent years. The tracking method, which is dominated by particle filter, has been widely used. The particle filter algorithm exhibits high complexity and poor real-time performance under large data processing conditions. With the development of neural networks and big data, a new LRCN network model combined with CNN and LSTM is proposed for moving target tracking in this paper. LRCN uses the deep learning framework to extract the characteristics of the video data. and uses the CNN to acquire the characteristics of the video sequence image, then make predictions in chronological order through the LSTM network structure. In addition, LRCN utilizes double deep learning to synchronize space convolution and time stream convolution. Using Matlab to experiment with standard data set VTB, remarkable results have been achieved in tracking accuracy and success rate with LRCN.
机译:运动目标跟踪是近年来计算机视觉中的热点。以粒子滤波器为主的跟踪方法已被广泛使用。在大数据处理条件下,粒子滤波算法具有较高的复杂度和较差的实时性能。随着神经网络和大数据的发展,提出了一种结合CNN和LSTM的LRCN网络模型进行运动目标跟踪。 LRCN使用深度学习框架来提取视频数据的特征。并使用CNN获取视频序列图像的特征,然后通过LSTM网络结构按时间顺序进行预测。此外,LRCN利用双重深度学习来同步空间卷积和时间流卷积。使用Matlab对标准数据集VTB进行实验,使用LRCN在跟踪精度和成功率方面取得了显著成果。

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