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Papers/Strength in Diversity: Multi-Branch Representation Learnin...

Strength in Diversity: Multi-Branch Representation Learning for Vehicle Re-Identification

Eurico Almeida, Bruno Silva, Jorge Batista

2023-10-02Vehicle Re-IdentificationRepresentation Learning
PaperPDFCode(official)

Abstract

This paper presents an efficient and lightweight multi-branch deep architecture to improve vehicle re-identification (V-ReID). While most V-ReID work uses a combination of complex multi-branch architectures to extract robust and diversified embeddings towards re-identification, we advocate that simple and lightweight architectures can be designed to fulfill the Re-ID task without compromising performance. We propose a combination of Grouped-convolution and Loss-Branch-Split strategies to design a multi-branch architecture that improve feature diversity and feature discriminability. We combine a ResNet50 global branch architecture with a BotNet self-attention branch architecture, both designed within a Loss-Branch-Split (LBS) strategy. We argue that specialized loss-branch-splitting helps to improve re-identification tasks by generating specialized re-identification features. A lightweight solution using grouped convolution is also proposed to mimic the learning of loss-splitting into multiple embeddings while significantly reducing the model size. In addition, we designed an improved solution to leverage additional metadata, such as camera ID and pose information, that uses 97% less parameters, further improving re-identification performance. In comparison to state-of-the-art (SoTA) methods, our approach outperforms competing solutions in Veri-776 by achieving 85.6% mAP and 97.7% CMC1 and obtains competitive results in Veri-Wild with 88.1% mAP and 96.3% CMC1. Overall, our work provides important insights into improving vehicle re-identification and presents a strong basis for other retrieval tasks. Our code is available at the https://github.com/videturfortuna/vehicle_reid_itsc2023.

Results

TaskDatasetMetricValueModel
Intelligent SurveillanceVeRi-776Rank-198MBR4B-LAI (w/ RK)
Intelligent SurveillanceVeRi-776Rank598.6MBR4B-LAI (w/ RK)
Intelligent SurveillanceVeRi-776mAP92.1MBR4B-LAI (w/ RK)
Intelligent SurveillanceVeRi-776Rank-197.8MBR4B-LAI (without re-ranking)
Intelligent SurveillanceVeRi-776Rank599MBR4B-LAI (without re-ranking)
Intelligent SurveillanceVeRi-776mAP86MBR4B-LAI (without re-ranking)
Intelligent SurveillanceVeRi-776Rank-197.68MBR4B (without re-ranking)
Intelligent SurveillanceVeRi-776Rank598.45MBR4B (without re-ranking)
Intelligent SurveillanceVeRi-776mAP84.72MBR4B (without re-ranking)
Intelligent SurveillanceVehicleID SmallRank-188.3MBR-4B (without RK)
Intelligent SurveillanceVehicleID SmallmAP92.5MBR-4B (without RK)
Intelligent SurveillanceVeRi-Wild SmallRank196.6MBR-4B (without RK)
Intelligent SurveillanceVeRi-Wild SmallmAP88.9MBR-4B (without RK)
Vehicle Re-IdentificationVeRi-776Rank-198MBR4B-LAI (w/ RK)
Vehicle Re-IdentificationVeRi-776Rank598.6MBR4B-LAI (w/ RK)
Vehicle Re-IdentificationVeRi-776mAP92.1MBR4B-LAI (w/ RK)
Vehicle Re-IdentificationVeRi-776Rank-197.8MBR4B-LAI (without re-ranking)
Vehicle Re-IdentificationVeRi-776Rank599MBR4B-LAI (without re-ranking)
Vehicle Re-IdentificationVeRi-776mAP86MBR4B-LAI (without re-ranking)
Vehicle Re-IdentificationVeRi-776Rank-197.68MBR4B (without re-ranking)
Vehicle Re-IdentificationVeRi-776Rank598.45MBR4B (without re-ranking)
Vehicle Re-IdentificationVeRi-776mAP84.72MBR4B (without re-ranking)
Vehicle Re-IdentificationVehicleID SmallRank-188.3MBR-4B (without RK)
Vehicle Re-IdentificationVehicleID SmallmAP92.5MBR-4B (without RK)
Vehicle Re-IdentificationVeRi-Wild SmallRank196.6MBR-4B (without RK)
Vehicle Re-IdentificationVeRi-Wild SmallmAP88.9MBR-4B (without RK)

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