航空视频中目标跟踪的暹罗网络

Xiaolin Zhao, Shilin Zhou, Lin Lei, Zhipeng Deng
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引用次数: 3

摘要

在无人机(UAV)视频中,由于空间分辨率低、实时性差,目标跟踪仍然是一个挑战。近年来,深度学习方法在计算机视觉的目标跟踪方面取得了很大的进展,特别是全卷积连体神经网络(SiamFC)。受其启发,本文旨在研究SiamFC在无人机视频中目标跟踪的应用。该网络是在UAV123数据集和斯坦福无人机数据集的一部分上训练的。首先,从第一帧提取样本图像,并在接下来的帧中提取搜索区域。然后,通过计算样本图像与搜索区域之间的相似度,使用Siamese网络进行目标跟踪。为了评估我们的方法,我们在一个挑战VIVID数据集上进行了测试。实验表明,与现有方法相比,该方法在低空间分辨率无人机视频中的精度和速度都有提高。
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Siamese Network for Object Tracking in Aerial Video
In Unmanned Aerial Vehicle (UAV) videos, object tracking remains a challenge, due to its low spatial resolution and poor real-time performance. Recently, methods of deep learning have made great progress in object tracking in computer vision, especially fully-convolutional siamese neural networks (SiamFC). Inspired by it, this paper aims to investigate the use of SiamFC for object tracking in UAV videos. The network is trained on part of a UAV123 dataset and Stanford Drone dataset. First, exemplar image is extracted from the first frame and search regions are extracted in the following frames. Then, a Siamese network is used for tracking objects by calculating the similarity between exemplar image and search region. To evaluate our method, we test on a challenge VIVID dataset. The experiment shows that the proposed method has improvements in accuracy and speed in low spatial resolution UAV videos compared to existing methods.
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