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 12511275 of 1488 papers

TitleStatusHype
Beyond Domain Gap: Exploiting Subjectivity in Sketch-Based Person RetrievalCode0
Pseudo Labels Refinement with Intra-camera Similarity for Unsupervised Person Re-identificationCode0
Benchmarking person re-identification datasets and approaches for practical real-world implementationsCode0
MagnifierNet: Towards Semantic Adversary and Fusion for Person Re-identificationCode0
Look Closer to Your Enemy: Learning to Attack via Teacher-Student MimickingCode0
Person Re-identification: Implicitly Defining the Receptive Fields of Deep Learning Classification FrameworksCode0
Batch DropBlock Network for Person Re-identification and BeyondCode0
Leveraging Virtual and Real Person for Unsupervised Person Re-identificationCode0
Pyramidal Transformer with Conv-Patchify for Person Re-identificationCode0
Multi-Attribute Enhancement Network for Person SearchCode0
Triplet-based Deep Similarity Learning for Person Re-IdentificationCode0
Erasing, Transforming, and Noising Defense Network for Occluded Person Re-IdentificationCode0
Quality Aware Network for Set to Set RecognitionCode0
Adaptive Graph Representation Learning for Video Person Re-identificationCode0
Learning Transferable Pedestrian Representation from Multimodal Information SupervisionCode0
Learning to Disentangle Scenes for Person Re-identificationCode0
Spectral Enhancement and Pseudo-Anchor Guidance for Infrared-Visible Person Re-IdentificationCode0
Spectral Feature Transformation for Person Re-identificationCode0
Enhancing Person Re-identification in a Self-trained SubspaceCode0
Triplet Permutation Method for Deep Learning of Single-Shot Person Re-IdentificationCode0
Multi-granularity for knowledge distillationCode0
SphereReID: Deep Hypersphere Manifold Embedding for Person Re-IdentificationCode0
Ranking Aggregation with Interactive Feedback for Collaborative Person Re-identificationCode0
Ranking and Classification driven Feature Learning for Person Re_identificationCode0
End-to-End Deep Kronecker-Product Matching for Person Re-identificationCode0
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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