Xucheng Wang, Dan Zeng, Yongxin Li, Mingliang Zou, Qijun Zhao, Shuiwang Li
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引用次数: 0
摘要
由于受到计算资源、电池容量和无人机最大负载能力的限制,解决无人机跟踪中实现高效率和高精度的核心难题至关重要。基于判别相关滤波器(DCF)的跟踪器在单个 CPU 上具有出色的效率,但在精度方面却相对落后。相比之下,许多基于模型压缩的轻量级深度学习(DL)跟踪器在效率和精度之间取得了更好的平衡。然而,较高的压缩率会降低辨别表征,从而影响性能。鉴于这些挑战,我们的论文旨在通过一种创新的特征学习方法来增强特征表征的判别能力。我们特别强调利用对比实例实现更独特的表征,从而实现有效的无人机跟踪。我们的方法无需手动注释,便于创建和部署轻量级模型。据我们所知,我们是在无人机跟踪应用中探索对比学习可能性的先驱。通过在 UAVDT、DTB70、UAV123@10fps 和 VisDrone2018 这四个无人机基准测试中进行广泛实验,我们证明了我们的 DRCI(具有对比性实例的判别表示)跟踪器优于当前最先进的无人机跟踪方法,凸显了其有效解决该领域长期挑战的潜力。
Enhancing UAV tracking: a focus on discriminative representations using contrastive instances
Addressing the core challenges of achieving both high efficiency and precision in UAV tracking is crucial due to limitations in computing resources, battery capacity, and maximum load capacity on UAVs. Discriminative correlation filter (DCF)-based trackers excel in efficiency on a single CPU but lag in precision. In contrast, many lightweight deep learning (DL)-based trackers based on model compression strike a better balance between efficiency and precision. However, higher compression rates can hinder performance by diminishing discriminative representations. Given these challenges, our paper aims to enhance feature representations’ discriminative abilities through an innovative feature-learning approach. We specifically emphasize leveraging contrasting instances to achieve more distinct representations for effective UAV tracking. Our method eliminates the need for manual annotations and facilitates the creation and deployment of lightweight models. As far as our knowledge goes, we are the pioneers in exploring the possibilities of contrastive learning in UAV tracking applications. Through extensive experimentation across four UAV benchmarks, namely, UAVDT, DTB70, UAV123@10fps and VisDrone2018, We have shown that our DRCI (discriminative representation with contrastive instances) tracker outperforms current state-of-the-art UAV tracking methods, underscoring its potential to effectively tackle the persistent challenges in this field.
期刊介绍:
Due to rapid advancements in integrated circuit technology, the rich theoretical results that have been developed by the image and video processing research community are now being increasingly applied in practical systems to solve real-world image and video processing problems. Such systems involve constraints placed not only on their size, cost, and power consumption, but also on the timeliness of the image data processed.
Examples of such systems are mobile phones, digital still/video/cell-phone cameras, portable media players, personal digital assistants, high-definition television, video surveillance systems, industrial visual inspection systems, medical imaging devices, vision-guided autonomous robots, spectral imaging systems, and many other real-time embedded systems. In these real-time systems, strict timing requirements demand that results are available within a certain interval of time as imposed by the application.
It is often the case that an image processing algorithm is developed and proven theoretically sound, presumably with a specific application in mind, but its practical applications and the detailed steps, methodology, and trade-off analysis required to achieve its real-time performance are not fully explored, leaving these critical and usually non-trivial issues for those wishing to employ the algorithm in a real-time system.
The Journal of Real-Time Image Processing is intended to bridge the gap between the theory and practice of image processing, serving the greater community of researchers, practicing engineers, and industrial professionals who deal with designing, implementing or utilizing image processing systems which must satisfy real-time design constraints.