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/Deep Miner: A Deep and Multi-branch Network which Mines Ri...

Deep Miner: A Deep and Multi-branch Network which Mines Rich and Diverse Features for Person Re-identification

Abdallah Benzine, Mohamed El Amine Seddik, Julien Desmarais

2021-02-18Person Re-Identificationobject-detectionObject Detection
PaperPDFCode

Abstract

Most recent person re-identification approaches are based on the use of deep convolutional neural networks (CNNs). These networks, although effective in multiple tasks such as classification or object detection, tend to focus on the most discriminative part of an object rather than retrieving all its relevant features. This behavior penalizes the performance of a CNN for the re-identification task, since it should identify diverse and fine grained features. It is then essential to make the network learn a wide variety of finer characteristics in order to make the re-identification process of people effective and robust to finer changes. In this article, we introduce Deep Miner, a method that allows CNNs to "mine" richer and more diverse features about people for their re-identification. Deep Miner is specifically composed of three types of branches: a Global branch (G-branch), a Local branch (L-branch) and an Input-Erased branch (IE-branch). G-branch corresponds to the initial backbone which predicts global characteristics, while L-branch retrieves part level resolution features. The IE-branch for its part, receives partially suppressed feature maps as input thereby allowing the network to "mine" new features (those ignored by G-branch) as output. For this special purpose, a dedicated suppression procedure for identifying and removing features within a given CNN is introduced. This suppression procedure has the major benefit of being simple, while it produces a model that significantly outperforms state-of-the-art (SOTA) re-identification methods. Specifically, we conduct experiments on four standard person re-identification benchmarks and witness an absolute performance gain up to 6.5% mAP compared to SOTA.

Results

TaskDatasetMetricValueModel
Person Re-IdentificationMSMT17Rank-185.6Deep Miner (w/o ReRank)
Person Re-IdentificationMSMT17mAP67.3Deep Miner (w/o ReRank)
Person Re-IdentificationCUHK03 detectedMAP81.4Deep Miner (w/o ReRank)
Person Re-IdentificationCUHK03 detectedRank-183.5Deep Miner (w/o ReRank)
Person Re-IdentificationCUHK03 labeledMAP84.7Deep Miner (w/o ReRank)
Person Re-IdentificationCUHK03 labeledRank-186.6Deep Miner (w/o ReRank)
Person Re-IdentificationMarket-1501Rank-195.7Deep Miner (w/o ReRank)
Person Re-IdentificationMarket-1501mAP90.4Deep Miner (w/o ReRank)
Person Re-IdentificationDukeMTMC-reIDRank-191.2Deep Miner (w/o ReRank)
Person Re-IdentificationDukeMTMC-reIDmAP81.8Deep Miner (w/o ReRank)

Related Papers

Weakly Supervised Visible-Infrared Person Re-Identification via Heterogeneous Expert Collaborative Consistency Learning2025-07-17WhoFi: Deep Person Re-Identification via Wi-Fi Channel Signal Encoding2025-07-17A Real-Time System for Egocentric Hand-Object Interaction Detection in Industrial Domains2025-07-17RS-TinyNet: Stage-wise Feature Fusion Network for Detecting Tiny Objects in Remote Sensing Images2025-07-17Decoupled PROB: Decoupled Query Initialization Tasks and Objectness-Class Learning for Open World Object Detection2025-07-17Dual LiDAR-Based Traffic Movement Count Estimation at a Signalized Intersection: Deployment, Data Collection, and Preliminary Analysis2025-07-17Vision-based Perception for Autonomous Vehicles in Obstacle Avoidance Scenarios2025-07-16Try Harder: Hard Sample Generation and Learning for Clothes-Changing Person Re-ID2025-07-15