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Towards Real-Time Systems for Vehicle Re-Identification, Multi-Camera Tracking, and Anomaly Detection | IEEE Conference Publication | IEEE Xplore

Towards Real-Time Systems for Vehicle Re-Identification, Multi-Camera Tracking, and Anomaly Detection


Abstract:

Vehicle re-identification, multi-camera vehicle tracking, and anomaly detection are essential for city-scale intelligent transportation systems. Both vehicle re-id and mu...Show More

Abstract:

Vehicle re-identification, multi-camera vehicle tracking, and anomaly detection are essential for city-scale intelligent transportation systems. Both vehicle re-id and multi-camera tracking are challenging due to variations in aspect-ratio, occlusion, and orientation. Robust re-id and tracking systems must consider small scale variations in a vehicle's appearance to accurately distinguish among vehicles of the same make, model, and color. Scalability is critical for multi-camera systems, as the number of objects in a scene is not known a-priori. Anomaly detection presents a unique challenge due to a dearth of annotations and varied video quality. In this paper, we address the task of vehicle re-id by introducing an unsupervised excitation layer to enhance representation learning. We propose a multi-camera tracking pipeline leveraging this re-id feature extractor to compute a distance matrix and perform clustering to obtain multi-camera vehicle trajectories. Lastly, we leverage background modeling techniques to localize anomalies such as stalled vehicles and collisions. We show the effectiveness of our proposed method on the NVIDIA AI City Challenge, where we obtain 7th place out of 41 teams for the task of vehicle re-id, with an mAP score of 66.68% and achieve state-of-the-art results on the Vehicle-ID dataset. We also obtain an IDF1 score of 12.45% on multi-camera vehicle tracking, and an S4 score of 29.52% for task of anomaly detection, ranking in the top 5 for both tracks.
Date of Conference: 14-19 June 2020
Date Added to IEEE Xplore: 28 July 2020
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ISSN Information:

Conference Location: Seattle, WA, USA

1. Introduction

In recent years, there has been great demand to develop automated and intelligent transportation systems for smart cities that can facilitate dynamic traffic routing, traffic planning, gathering vehicle-specific analytics like speed [17], and traffic anomaly detection. Moreover, the development of Deep Convolutional Neural Networks (DCNNs) has enabled the development of effective solutions to these challenges. For the past three years, NVIDIA AI City Challenge has pushed the boundaries of intelligent transportation systems. In this paper, we present a deep learning-based algorithm for the task of vehicle re-identification (reid), and end-to-end pipelines for Multi-Camera Tracking (MTC) and anomaly detection.

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