Optimizing ROI Benefits Vehicle ReID in ITS
Mei Qiu, Lauren Ann Christopher, Lingxi Li, Stanley Chien, Yaobin Chen

TL;DR
This paper investigates how selecting optimal vehicle detection regions based on confidence scores can improve vehicle re-identification accuracy in intelligent transportation systems, especially under challenging conditions.
Contribution
It introduces a framework using multiple ROIs and lane-wise counts, demonstrating that features from inside-ROI images are more consistent and improve ReID performance.
Findings
Higher cosine similarity for inside-ROI images, especially at night.
Significant improvements in cross-camera scenarios with inside-ROI features.
Support from entropy and clustering metrics for ROI-based feature consistency.
Abstract
Vehicle re-identification (ReID) is a computer vision task that matches the same vehicle across different cameras or viewpoints in a surveillance system. This is crucial for Intelligent Transportation Systems (ITS), where the effectiveness is influenced by the regions from which vehicle images are cropped. This study explores whether optimal vehicle detection regions, guided by detection confidence scores, can enhance feature matching and ReID tasks. Using our framework with multiple Regions of Interest (ROIs) and lane-wise vehicle counts, we employed YOLOv8 for detection and DeepSORT for tracking across twelve Indiana Highway videos, including two pairs of videos from non-overlapping cameras. Tracked vehicle images were cropped from inside and outside the ROIs at five-frame intervals. Features were extracted using pre-trained models: ResNet50, ResNeXt50, Vision Transformer, and…
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Taxonomy
TopicsIoT and GPS-based Vehicle Safety Systems · Internet of Things and Social Network Interactions · IoT and Edge/Fog Computing
MethodsAttention Is All You Need · You Only Look Once · Byte Pair Encoding · Layer Normalization · Linear Layer · Label Smoothing · Adam · Dropout · Multi-Head Attention · Dense Connections
