CVSep 23, 2025

Track-On2: Enhancing Online Point Tracking with Memory

arXiv:2509.19115v14 citationsh-index: 6
Originality Incremental advance
AI Analysis

This addresses the problem of robust point tracking for real-time applications like streaming, though it is incremental as an extension of prior work.

The paper tackles long-term point tracking in videos under appearance changes and occlusion by introducing Track-On2, a transformer-based model that processes frames causally with memory, achieving state-of-the-art results on five benchmarks and surpassing prior online and offline methods.

In this paper, we consider the problem of long-term point tracking, which requires consistent identification of points across video frames under significant appearance changes, motion, and occlusion. We target the online setting, i.e. tracking points frame-by-frame, making it suitable for real-time and streaming applications. We extend our prior model Track-On into Track-On2, a simple and efficient transformer-based model for online long-term tracking. Track-On2 improves both performance and efficiency through architectural refinements, more effective use of memory, and improved synthetic training strategies. Unlike prior approaches that rely on full-sequence access or iterative updates, our model processes frames causally and maintains temporal coherence via a memory mechanism, which is key to handling drift and occlusions without requiring future frames. At inference, we perform coarse patch-level classification followed by refinement. Beyond architecture, we systematically study synthetic training setups and their impact on memory behavior, showing how they shape temporal robustness over long sequences. Through comprehensive experiments, Track-On2 achieves state-of-the-art results across five synthetic and real-world benchmarks, surpassing prior online trackers and even strong offline methods that exploit bidirectional context. These results highlight the effectiveness of causal, memory-based architectures trained purely on synthetic data as scalable solutions for real-world point tracking. Project page: https://kuis-ai.github.io/track_on2

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