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arxiv: 2502.16809 · v1 · pith:UNRIP2FBnew · submitted 2025-02-24 · 💻 cs.CV · cs.AI

CRTrack: Low-Light Semi-Supervised Multi-object Tracking Based on Consistency Regularization

classification 💻 cs.CV cs.AI
keywords trackingmulti-objectlow-lightdatasetsemi-supervisedcrtrackdatamethod
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Multi-object tracking under low-light environments is prevalent in real life. Recent years have seen rapid development in the field of multi-object tracking. However, due to the lack of datasets and the high cost of annotations, multi-object tracking under low-light environments remains a persistent challenge. In this paper, we focus on multi-object tracking under low-light conditions. To address the issues of limited data and the lack of dataset, we first constructed a low-light multi-object tracking dataset (LLMOT). This dataset comprises data from MOT17 that has been enhanced for nighttime conditions as well as multiple unannotated low-light videos. Subsequently, to tackle the high annotation costs and address the issue of image quality degradation, we propose a semi-supervised multi-object tracking method based on consistency regularization named CRTrack. First, we calibrate a consistent adaptive sampling assignment to replace the static IoU-based strategy, enabling the semi-supervised tracking method to resist noisy pseudo-bounding boxes. Then, we design a adaptive semi-supervised network update method, which effectively leverages unannotated data to enhance model performance. Dataset and Code: https://github.com/ZJZhao123/CRTrack.

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  1. PS-MOT: Cultivating Instance Awareness from Point Seeds for Multi-Object Tracking

    cs.CV 2026-06 unverdicted novelty 5.0

    PS-Track sets a new state-of-the-art for point-supervised multi-object tracking by converting point seeds into temporally consistent pseudo-labels via Temporal-Feedback Prompting, Point-Excited Wavelet Attention, and ...