HyperAI
Home
News
Latest Papers
Tutorials
Datasets
Wiki
SOTA
LLM Models
GPU Leaderboard
Events
Search
About
English
HyperAI
Toggle sidebar
Search the site…
⌘
K
Home
SOTA
Person Re-Identification
Person Re Identification On Dukemtmc Reid
Person Re Identification On Dukemtmc Reid
Metrics
Rank-1
mAP
Results
Performance results of various models on this benchmark
Columns
Model Name
Rank-1
mAP
Paper Title
Repository
Auto-ReID(RK)
91.4
89.2
Auto-ReID: Searching for a Part-aware ConvNet for Person Re-Identification
CTL Model (ResNet50, 256x128)
95.6
96.1
On the Unreasonable Effectiveness of Centroids in Image Retrieval
MAR
79.8
48
Unsupervised Person Re-identification by Soft Multilabel Learning
TriNet + Random Erasing
73.0
56.6
Random Erasing Data Augmentation
APR
70.69
51.88
Improving Person Re-identification by Attribute and Identity Learning
SSP-ReID
81.8
68.6
Improved Person Re-Identification Based on Saliency and Semantic Parsing with Deep Neural Network Models
OIM
68.1
47.4
Joint Detection and Identification Feature Learning for Person Search
DAAF-BoT
87.9
77.9
Deep Attention Aware Feature Learning for Person Re-Identification
Adaptive L2 Regularization (with re-ranking)
92.2
90.7
Adaptive L2 Regularization in Person Re-Identification
FlipReID (with re-ranking)
93.0
90.7
FlipReID: Closing the Gap between Training and Inference in Person Re-Identification
Top-DB-Net + RK
90.9
88.6
Top-DB-Net: Top DropBlock for Activation Enhancement in Person Re-Identification
ISP
89.6
80
Identity-Guided Human Semantic Parsing for Person Re-Identification
Pyramid (CVPR'19)
89.0
79.0
Pyramidal Person Re-IDentification via Multi-Loss Dynamic Training
DAAF-BoT(RK)
91.7
89.6
Deep Attention Aware Feature Learning for Person Re-Identification
GAN
67.68
47.13
Unlabeled Samples Generated by GAN Improve the Person Re-identification Baseline in vitro
DG-Net(RK)
90.26
88.31
Joint Discriminative and Generative Learning for Person Re-identification
Incremental Learning
80.0
60.2
Incremental Learning in Person Re-Identification
RPTM
93.5
89.2
Relation Preserving Triplet Mining for Stabilising the Triplet Loss in Re-identification Systems
LDS (ResNet50 + RK)
92.91
91.0
Learning to Disentangle Scenes for Person Re-identification
-
Deep Miner (w/o ReRank)
91.20
81.80
Deep Miner: A Deep and Multi-branch Network which Mines Rich and Diverse Features for Person Re-identification
0 of 94 row(s) selected.
Previous
Next