SOTAVerified

Person Re-Identification

Person Re-Identification is a computer vision task in which the goal is to match a person's identity across different cameras or locations in a video or image sequence. It involves detecting and tracking a person and then using features such as appearance, body shape, and clothing to match their identity in different frames. The goal is to associate the same person across multiple non-overlapping camera views in a robust and efficient manner.

Papers

Showing 11761200 of 1488 papers

TitleStatusHype
Parameter Hierarchical Optimization for Visible-Infrared Person Re-Identification0
Part-Aligned Bilinear Representations for Person Re-identification0
Part-Attention Based Model Make Occluded Person Re-Identification Stronger0
Part-based Deep Hashing for Large-scale Person Re-identification0
PartFormer: Awakening Latent Diverse Representation from Vision Transformer for Object Re-Identification0
Partial Person Re-Identification0
Partial Person Re-identification with Alignment and Hallucination0
Partial Person Re-Identification With Part-Part Correspondence Learning0
PartMix: Regularization Strategy to Learn Part Discovery for Visible-Infrared Person Re-identification0
Pedestrian re-identification based on Tree branch network with local and global learning0
Permutation-invariant Feature Restructuring for Correlation-aware Image Set-based Recognition0
Person30K: A Dual-Meta Generalization Network for Person Re-Identification0
Person De-reidentification: A Variation-guided Identity Shift Modeling0
Person image generation with semantic attention network for person re-identification0
PersonMAE: Person Re-Identification Pre-Training with Masked AutoEncoders0
Person re-identification across different datasets with multi-task learning0
Person Re-identification: A Retrospective on Domain Specific Open Challenges and Future Trends0
Person Re-identification Based on Color Histogram and Spatial Configuration of Dominant Color Regions0
Improved Res2Net model for Person re-identification0
Person Re-identification based on Robust Features in Open-world0
Person Re-identification by analyzing Dynamic Variations in Gait Sequences0
Person Re-Identification by Camera Correlation Aware Feature Augmentation0
Person Re-Identification by Context-aware Part Attention and Multi-Head Collaborative Learning0
Person Re-Identification by Deep Joint Learning of Multi-Loss Classification0
Person Re-Identification by Discriminative Selection in Video Ranking0
Show:102550
← PrevPage 48 of 60Next →

Benchmark Results

#ModelMetricClaimedVerifiedStatus
1st-ReID(RE, RK)Rank-198Unverified
2SSKD(GH)Rank-197.36Unverified
3CLIP-ReID+Pose2ID (no RK)Rank-197.3Unverified
4SOLIDER +UFFM+AMCRank-197Unverified
5Unsupervised Pre-training (ResNet101+MGN)Rank-197Unverified
6RGT&RGPR (RK)Rank-196.9Unverified
7SOLIDERRank-196.9Unverified
8LightMBN (RR)Rank-196.8Unverified
9Viewpoint-Aware Loss(RK)Rank-196.79Unverified
10SOLIDER (RK)Rank-196.7Unverified
#ModelMetricClaimedVerifiedStatus
1DenseILmAP97.1Unverified
2CTL Model (ResNet50, 256x128)mAP96.1Unverified
3BPBreID (RK)mAP92.9Unverified
4Unsupervised Pre-training (ResNet101+RK)mAP92.77Unverified
5st-ReID(RE, RK,Cam)mAP92.7Unverified
6RGT&RGPR (RK)mAP92.7Unverified
7Viewpoint-Aware Loss(RK)mAP91.8Unverified
8LDS (ResNet50 + RK)mAP91Unverified
9Adaptive L2 Regularization (with re-ranking)mAP90.7Unverified
10FlipReID (with re-ranking)mAP90.7Unverified