PRB-FPN+:执行摩托车头盔法的视频分析

Bo Wang, Ping-Yang Chen, Yi-Kuan Hsieh, J. Hsieh, Ming-Ching Chang, JiaXin He, Shin-You Teng, HaoYuan Yue, Yu-Chee Tseng
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引用次数: 1

摘要

我们提出了一个视频分析系统,用于执行摩托车头盔法规,作为2023年人工智能城市挑战赛[18]赛道5比赛的参与。强大的目标探测器的广告可以实时定位道路使用者,甚至可以确定摩托车手或骑手是否戴着头盔。确保道路安全很重要,因为头盔可以有效地提供保护,防止严重伤害和死亡。然而,鉴于大量摩托车手和有限的视觉输入(如闭塞),监测和强制遵守头盔是具有挑战性的。为了应对这些挑战,我们提出了一种新的两步法。首先,我们介绍了PRB-FPN+,一种最先进的探测器,擅长目标定位。我们还通过在网络中加入辅助头来探索深度监督的好处,从而提高我们的深度学习架构的性能。其次,我们利用一个名为SMILEtrack的高级跟踪器来关联和细化目标track-let。综合实验结果表明,PRB-FPN+优于MS-COCO上最先进的探测器。我们的系统在AI City Challenge 2023 [18] Track 5公共排行榜上取得了令人瞩目的第8名。代码实现可在:https://github.com/NYCU-AICVLab/AICITY_2023_Track5。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PRB-FPN+: Video Analytics for Enforcing Motorcycle Helmet Laws
We present a video analytic system for enforcing motorcycle helmet regulation as a participation to the AI City Challenge 2023 [18] Track 5 contest. The advert of powerful object detectors enables real-time localization of the road users and even the ability to determine if a motorcyclist or a rider is wearing a helmet. Ensuring road safety is important, as the helmets can effectively provide protection against severe injuries and fatalities. However, monitoring and enforcing helmet compliance is challenging, given the large number of motorcyclists and limited visual input such as occlusions. To address these challenges, we propose a novel two-step approach. First, we introduce the PRB-FPN+, a state-of-the-art detector that excels in object localization. We also explore the benefits of deep supervision by incorporating auxiliary heads within the network, leading to enhanced performance of our deep learning architectures. Second, we utilize an advanced tracker named SMILEtrack to associate and refine the target track-lets. Comprehensive experimental results demonstrate that the PRB-FPN+ outperforms the state-of-the-art detectors on MS-COCO. Our system achieved a remarkable rank of 8 on the AI City Challenge 2023 [18] Track 5 Public Leader-board. Code implementation is available at: https://github.com/NYCU-AICVLab/AICITY_2023_Track5.
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