TasksSotADatasetsPapersMethodsSubmitAbout
Papers With Code 2

A community resource for machine learning research: papers, code, benchmarks, and state-of-the-art results.

Explore

Notable BenchmarksAll SotADatasetsPapersMethods

Community

Submit ResultsAbout

Data sourced from the PWC Archive (CC-BY-SA 4.0). Built by the community, for the community.

Papers/Alpha-Refine: Boosting Tracking Performance by Precise Bou...

Alpha-Refine: Boosting Tracking Performance by Precise Bounding Box Estimation

Bin Yan, Xinyu Zhang, Dong Wang, Huchuan Lu, Xiaoyun Yang

2020-12-12CVPR 2021 1Visual Object TrackingSemi-Supervised Video Object SegmentationObject Tracking
PaperPDFCode(official)

Abstract

Visual object tracking aims to precisely estimate the bounding box for the given target, which is a challenging problem due to factors such as deformation and occlusion. Many recent trackers adopt the multiple-stage tracking strategy to improve the quality of bounding box estimation. These methods first coarsely locate the target and then refine the initial prediction in the following stages. However, existing approaches still suffer from limited precision, and the coupling of different stages severely restricts the method's transferability. This work proposes a novel, flexible, and accurate refinement module called Alpha-Refine (AR), which can significantly improve the base trackers' box estimation quality. By exploring a series of design options, we conclude that the key to successful refinement is extracting and maintaining detailed spatial information as much as possible. Following this principle, Alpha-Refine adopts a pixel-wise correlation, a corner prediction head, and an auxiliary mask head as the core components. Comprehensive experiments on TrackingNet, LaSOT, GOT-10K, and VOT2020 benchmarks with multiple base trackers show that our approach significantly improves the base trackers' performance with little extra latency. The proposed Alpha-Refine method leads to a series of strengthened trackers, among which the ARSiamRPN (AR strengthened SiamRPNpp) and the ARDiMP50 (ARstrengthened DiMP50) achieve good efficiency-precision trade-off, while the ARDiMPsuper (AR strengthened DiMP-super) achieves very competitive performance at a real-time speed. Code and pretrained models are available at https://github.com/MasterBin-IIAU/AlphaRefine.

Results

TaskDatasetMetricValueModel
VideoVOT2020EAO0.482AlphaRef
VideoVOT2020EAO (real-time)0.486AlphaRef
Video Object SegmentationVOT2020EAO0.482AlphaRef
Video Object SegmentationVOT2020EAO (real-time)0.486AlphaRef
Semi-Supervised Video Object SegmentationVOT2020EAO0.482AlphaRef
Semi-Supervised Video Object SegmentationVOT2020EAO (real-time)0.486AlphaRef

Related Papers

MVA 2025 Small Multi-Object Tracking for Spotting Birds Challenge: Dataset, Methods, and Results2025-07-17YOLOv8-SMOT: An Efficient and Robust Framework for Real-Time Small Object Tracking via Slice-Assisted Training and Adaptive Association2025-07-16HiM2SAM: Enhancing SAM2 with Hierarchical Motion Estimation and Memory Optimization towards Long-term Tracking2025-07-10Robustifying 3D Perception through Least-Squares Multi-Agent Graphs Object Tracking2025-07-07UMDATrack: Unified Multi-Domain Adaptive Tracking Under Adverse Weather Conditions2025-07-01Mamba-FETrack V2: Revisiting State Space Model for Frame-Event based Visual Object Tracking2025-06-30Visual and Memory Dual Adapter for Multi-Modal Object Tracking2025-06-30R1-Track: Direct Application of MLLMs to Visual Object Tracking via Reinforcement Learning2025-06-27