Real-Time Vehicle Tracking using Convolutional Neural Networks in Aerial Video

Yu Yang, Chengpo Mu, Ruixin Yang, Yanjie Wang
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Abstract

Vehicle tracking based on video images has been widely used in military and civilian fields. The tracking method must robust enough to hand the unexpected situations that may occur during the tracking process. In this paper, a novel vehicle tracking method based on convolutional neural networks (CNNs) is proposed to target the accurate and speed demand of vehicle tracking. The proposed method contains two networks with shared weights. It utilizes the residual block to reduce the train error. Offline training is used to achieve real-time tracking. It also use transfer learning to reduce training time. The experimental results under the real aerial video demonstrate that vehicle tracker achieves an accuracy of 70.8% and the speed of 135fps with GPU. The proposed method is robust enough to handle occlusion and other interference conditions.
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基于卷积神经网络的航拍视频实时车辆跟踪
基于视频图像的车辆跟踪已广泛应用于军事和民用领域。跟踪方法必须具有足够的鲁棒性,以应对跟踪过程中可能发生的意外情况。针对车辆跟踪的精度和速度要求,提出了一种基于卷积神经网络(cnn)的车辆跟踪方法。该方法包含两个具有共享权重的网络。它利用剩余块来减小列车误差。采用离线训练实现实时跟踪。它还使用迁移学习来减少训练时间。在真实航拍视频下的实验结果表明,在GPU下,车辆跟踪器的精度达到70.8%,速度达到135fps。该方法具有足够的鲁棒性,可以处理遮挡和其他干扰情况。
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