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Correlation-Embedded Transformer Tracking: A Single-Branch Framework. | LitMetric

AI Article Synopsis

  • The text discusses the challenges in developing effective appearance models for visual object tracking, particularly within the current Siamese-based methods, which often struggle to distinguish between target and non-target objects.
  • It introduces a new tracking framework called Single-Branch Tracking (SBT), inspired by transformer networks, that enhances feature extraction by embedding cross-image correlations at multiple layers, resulting in a more targeted approach.
  • An improved version, SuperSBT, adopts a hierarchical architecture and includes techniques like masked image modeling and temporal modeling, leading to better performance and increased tracking speed, significantly outperforming the original SBT in various benchmark tests.

Article Abstract

Developing robust and discriminative appearance models has been a long-standing research challenge in visual object tracking. In the prevalent Siamese-based paradigm, the features extracted by the Siamese-like networks are often insufficient to model the tracked targets and distractor objects, thereby hindering them from being robust and discriminative simultaneously. While most Siamese trackers focus on designing robust correlation operations, we propose a novel single-branch tracking framework inspired by the transformer. Unlike the Siamese-like feature extraction, our tracker deeply embeds cross-image feature correlation in multiple layers of the feature network. By extensively matching the features of the two images through multiple layers, it can suppress non-target features, resulting in target-aware feature extraction. The output features can be directly used to predict target locations without additional correlation steps. Thus, we reformulate the two-branch Siamese tracking as a conceptually simple, fully transformer-based Single-Branch Tracking pipeline, dubbed SBT. After conducting an in-depth analysis of the SBT baseline, we summarize many effective design principles and propose an improved tracker dubbed SuperSBT. SuperSBT adopts a hierarchical architecture with a local modeling layer to enhance shallow-level features. A unified relation modeling is proposed to remove complex handcrafted layer pattern designs. SuperSBT is further improved by masked image modeling pre-training, integrating temporal modeling, and equipping with dedicated prediction heads. Thus, SuperSBT outperforms the SBT baseline by 4.7%,3.0%, and 4.5% AUC scores in LaSOT, TrackingNet, and GOT-10K. Notably, SuperSBT greatly raises the speed of SBT from 37 FPS to 81 FPS. Extensive experiments show that our method achieves superior results on eight VOT benchmarks.

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Source
http://dx.doi.org/10.1109/TPAMI.2024.3448254DOI Listing

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