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/Target Transformed Regression for Accurate Tracking

Target Transformed Regression for Accurate Tracking

Yutao Cui, Cheng Jiang, LiMin Wang, Gangshan Wu

2021-04-01Visual Object TrackingVisual Trackingregression
PaperPDFCode(official)

Abstract

Accurate tracking is still a challenging task due to appearance variations, pose and view changes, and geometric deformations of target in videos. Recent anchor-free trackers provide an efficient regression mechanism but fail to produce precise bounding box estimation. To address these issues, this paper repurposes a Transformer-alike regression branch, termed as Target Transformed Regression (TREG), for accurate anchor-free tracking. The core to our TREG is to model pair-wise relation between elements in target template and search region, and use the resulted target enhanced visual representation for accurate bounding box regression. This target contextualized representation is able to enhance the target relevant information to help precisely locate the box boundaries, and deal with the object deformation to some extent due to its local and dense matching mechanism. In addition, we devise a simple online template update mechanism to select reliable templates, increasing the robustness for appearance variations and geometric deformations of target in time. Experimental results on visual tracking benchmarks including VOT2018, VOT2019, OTB100, GOT10k, NFS, UAV123, LaSOT and TrackingNet demonstrate that TREG obtains the state-of-the-art performance, achieving a success rate of 0.640 on LaSOT, while running at around 30 FPS. The code and models will be made available at https://github.com/MCG-NJU/TREG.

Results

TaskDatasetMetricValueModel
Object TrackingVOT2019Accuracy60.3TREG
Object TrackingVOT2019Expected Average Overlap (EAO)0.391TREG
Object TrackingUAV123AUC0.669TREG
Object TrackingUAV123Precision0.884TREG
Object TrackingVOT2018Accuracy61.2TREG
Object TrackingVOT2018Expected Average Overlap (EAO)0.496TREG
Object TrackingGOT-10kAverage Overlap66.8TREG
Object TrackingGOT-10kSuccess Rate 0.577.8TREG
Object TrackingGOT-10kSuccess Rate 0.7557.2TREG
Object TrackingTrackingNetAccuracy78.5TREG
Object TrackingTrackingNetNormalized Precision83.8TREG
Object TrackingTrackingNetPrecision75TREG
Visual Object TrackingVOT2019Accuracy60.3TREG
Visual Object TrackingVOT2019Expected Average Overlap (EAO)0.391TREG
Visual Object TrackingUAV123AUC0.669TREG
Visual Object TrackingUAV123Precision0.884TREG
Visual Object TrackingVOT2018Accuracy61.2TREG
Visual Object TrackingVOT2018Expected Average Overlap (EAO)0.496TREG
Visual Object TrackingGOT-10kAverage Overlap66.8TREG
Visual Object TrackingGOT-10kSuccess Rate 0.577.8TREG
Visual Object TrackingGOT-10kSuccess Rate 0.7557.2TREG
Visual Object TrackingTrackingNetAccuracy78.5TREG
Visual Object TrackingTrackingNetNormalized Precision83.8TREG
Visual Object TrackingTrackingNetPrecision75TREG

Related Papers

Language Integration in Fine-Tuning Multimodal Large Language Models for Image-Based Regression2025-07-20Neural Network-Guided Symbolic Regression for Interpretable Descriptor Discovery in Perovskite Catalysts2025-07-16Imbalanced Regression Pipeline Recommendation2025-07-16Second-Order Bounds for [0,1]-Valued Regression via Betting Loss2025-07-16Sparse Regression Codes exploit Multi-User Diversity without CSI2025-07-15Bradley-Terry and Multi-Objective Reward Modeling Are Complementary2025-07-10What You Have is What You Track: Adaptive and Robust Multimodal Tracking2025-07-08UMDATrack: Unified Multi-Domain Adaptive Tracking Under Adverse Weather Conditions2025-07-01