Unmanned aerial vehicle (UAV)-based visual object tracking has enabled a wide range of applications and attracted increasing attention in the field of intelligent transportation systems because of its versatility and effectiveness. As an emerging force in the revolutionary trend of deep learning, Siamese networks shine in UAV-based object tracking with their promising balance of accuracy, robustness, and speed. Thanks to the development of embedded processors and the gradual optimization of deep neural networks, Siamese trackers receive extensive research and realize preliminary combinations with UAVs. However, due to the UAV's limited onboard computational resources and the complex real-world circumstances, aerial tracking with Siamese networks still faces severe obstacles in many aspects. To further explore the deployment of Siamese networks in UAV-based tracking, this work presents a comprehensive review of leading-edge Siamese trackers, along with an exhaustive UAV-specific analysis based on the evaluation using a typical UAV onboard processor. Then, the onboard tests are conducted to validate the feasibility and efficacy of representative Siamese trackers in real-world UAV deployment. Furthermore, to better promote the development of the tracking community, this work analyzes the limitations of existing Siamese trackers and conducts additional experiments represented by low-illumination evaluations. In the end, prospects for the development of Siamese tracking for UAV-based intelligent transportation systems are deeply discussed. The unified framework of leading-edge Siamese trackers, i.e., code library, and the results of their experimental evaluations are available at https://github.com/vision4robotics/SiameseTracking4UAV .
翻译:无人驾驶航空飞行器(UAV)的视觉物体跟踪使大量应用得以实现,并因其多才多能和效力而在智能运输系统领域引起越来越多的注意。作为深刻学习革命趋势中的新趋势,Siamsese网络闪耀着基于UAV的物体跟踪,在准确性、稳健性和速度方面大有希望的平衡。由于开发了嵌入式处理器和逐步优化深层神经网络,Siamse跟踪器得到了广泛的研究,实现了与UAVs的初步组合。然而,由于UAV在机载计算资源上有限,而且复杂的现实世界环境,与Siamese网络的空中跟踪在许多方面仍面临严重障碍。为了进一步探索在UAV的跟踪中部署Siamse网络的部署情况,这项工作对领先的Siamseamese追踪器进行了全面审查,同时根据使用典型的UAVAV处理器系统进行的评估,进行了详尽的关于LAVereial的精确性测试。随后,在实际部署UAV轨道上对代表的Siabro 的Sial追踪结果进行了进一步分析。Sial-lavial 进行现有的实验,这是目前对Siam-lavial-lavial-trade-trade-lax-lavial的实验的发展过程进行进一步分析。