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arxiv 2307.13974 v1 pith:3GMB7FCV submitted 2023-07-26 cs.CV

Tracking Anything in High Quality

classification cs.CV
keywords trackingobjecthqtrackvideoanythingmodelqualityvmos
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Visual object tracking is a fundamental video task in computer vision. Recently, the notably increasing power of perception algorithms allows the unification of single/multiobject and box/mask-based tracking. Among them, the Segment Anything Model (SAM) attracts much attention. In this report, we propose HQTrack, a framework for High Quality Tracking anything in videos. HQTrack mainly consists of a video multi-object segmenter (VMOS) and a mask refiner (MR). Given the object to be tracked in the initial frame of a video, VMOS propagates the object masks to the current frame. The mask results at this stage are not accurate enough since VMOS is trained on several closeset video object segmentation (VOS) datasets, which has limited ability to generalize to complex and corner scenes. To further improve the quality of tracking masks, a pretrained MR model is employed to refine the tracking results. As a compelling testament to the effectiveness of our paradigm, without employing any tricks such as test-time data augmentations and model ensemble, HQTrack ranks the 2nd place in the Visual Object Tracking and Segmentation (VOTS2023) challenge. Code and models are available at https://github.com/jiawen-zhu/HQTrack.

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Cited by 1 Pith paper

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  1. `Attention-Guided Cross-Temporal Clustering for Self-Supervised Video Object Segmentation

    cs.CV 2026-07 conditional novelty 6.0

    A frozen SAM2 backbone with adaptive token selection and symmetric KL clustering achieves competitive self-supervised video object segmentation by aligning soft part assignments across time.