Contextual Enhancement–Interaction and Multi-Scale Weighted Fusion Network for Aerial Tracking

Drones Pub Date : 2024-07-24 DOI:10.3390/drones8080343
Bo Wang, Xuan Wang, Linglong Ma, Yujia Zuo, Chenglong Liu
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Abstract

Siamese-based trackers have been widely utilized in UAV visual tracking due to their outstanding performance. However, UAV visual tracking encounters numerous challenges, such as similar targets, scale variations, and background clutter. Existing Siamese trackers face two significant issues: firstly, they rely on single-branch features, limiting their ability to achieve long-term and accurate aerial tracking. Secondly, current tracking algorithms treat multi-level similarity responses equally, making it difficult to ensure tracking accuracy in complex airborne environments. To tackle these challenges, we propose a novel UAV tracking Siamese network named the contextual enhancement–interaction and multi-scale weighted fusion network, which is designed to improve aerial tracking performance. Firstly, we designed a contextual enhancement–interaction module to improve feature representation. This module effectively facilitates the interaction between the template and search branches and strengthens the features of each branch in parallel. Specifically, a cross-attention mechanism within the module integrates the branch information effectively. The parallel Transformer-based enhancement structure improves the feature saliency significantly. Additionally, we designed an efficient multi-scale weighted fusion module that adaptively weights the correlation response maps across different feature scales. This module fully utilizes the global similarity response between the template and the search area, enhancing feature distinctiveness and improving tracking results. We conducted experiments using several state-of-the-art trackers on aerial tracking benchmarks, including DTB70, UAV123, UAV20L, and UAV123@10fps, to validate the efficacy of the proposed network. The experimental results demonstrate that our tracker performs effectively in complex aerial tracking scenarios and competes well with state-of-the-art trackers.
用于空中跟踪的情境增强-交互和多尺度加权融合网络
基于连体的跟踪器因其出色的性能已被广泛应用于无人机视觉跟踪。然而,无人机视觉跟踪面临着许多挑战,如相似目标、尺度变化和背景杂波等。现有的连体跟踪器面临两个重大问题:首先,它们依赖于单分支特征,这限制了它们实现长期和精确空中跟踪的能力。其次,目前的跟踪算法对多层次相似性响应一视同仁,难以确保在复杂的机载环境中的跟踪精度。为应对这些挑战,我们提出了一种新型无人机跟踪连体网络--上下文增强交互与多尺度加权融合网络,旨在提高空中跟踪性能。首先,我们设计了一个上下文增强交互模块来改进特征表示。该模块有效促进了模板分支和搜索分支之间的互动,并行增强了各分支的特征。具体来说,模块内的交叉关注机制能有效整合各分支信息。基于 Transformer 的并行增强结构显著提高了特征突出度。此外,我们还设计了一个高效的多尺度加权融合模块,可对不同特征尺度的相关响应图进行自适应加权。该模块充分利用了模板和搜索区域之间的全局相似性响应,增强了特征的显著性,改善了跟踪结果。我们在 DTB70、UAV123、UAV20L 和 UAV123@10fps 等航拍跟踪基准上使用几种最先进的跟踪器进行了实验,以验证所提网络的功效。实验结果表明,我们的跟踪器在复杂的空中跟踪场景中表现出色,能与最先进的跟踪器相媲美。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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