Litcius/Paper detail

Towards Universal Modal Tracking With Online Dense Temporal Token Learning

Yaozong Zheng, Bineng Zhong, Qihua Liang, Shengping Zhang, Guorong Li, Xianxian Li, Rongrong Ji

2025IEEE Transactions on Pattern Analysis and Machine Intelligence8 citationsDOI

Abstract

We propose a universal video-level modality-awareness tracking model with online dense temporal token learning (called UM-ODTrack). It is designed to support various tracking tasks, including RGB, RGB+Thermal, RGB+Depth, and RGB+Event, utilizing the same model architecture and parameters. Specifically, our model is designed with three core goals: Video-level Sampling. We expand the model's inputs to a video sequence level, aiming to see a richer video context from an near-global perspective. Video-level Association. Furthermore, we introduce two simple yet effective online dense temporal token association mechanisms to propagate the appearance and motion trajectory information of target via a video stream manner. Modality Scalable. We propose two novel gated perceivers that adaptively learn cross-modal representations via a gated attention mechanism, and subsequently compress them into the same set of model parameters via a one-shot training manner for multi-task inference. This new solution brings the following benefits: (i) The purified token sequences can serve as temporal prompts for the inference in the next video frames, whereby previous information is leveraged to guide future inference. (ii) Unlike multi-modal trackers that require independent training, our one-shot training scheme not only alleviates the training burden, but also improves model representation. Extensive experiments on visible and multi-modal benchmarks show that our UM-ODTrack achieves a new SOTA performance.

Topics & Concepts

Computer scienceSecurity tokenArtificial intelligenceTracking (education)ModalComputer visionSpeech recognitionComputer securityPolymer chemistryPsychologyPedagogyChemistryVideo Surveillance and Tracking MethodsSpeech Recognition and SynthesisSpeech and Audio Processing
Towards Universal Modal Tracking With Online Dense Temporal Token Learning | Litcius