基于感应回路和激光雷达传感器的弹性车辆分类自适应学习框架

IF 4.6 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Yiqiao Li;Andre Y. C. Tok;Stephen G. Ritchie
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引用次数: 0

摘要

电感式环路传感器在美国被广泛部署,当采用感应签名技术和先进的机器学习模型进行增强后,可以提供与当前基于轴的传感器系统相当精度的车辆分类数据。然而,现有的卡车数量预计会周转,并被可能产生明显的感应特征的新车型所取代。因此,随着时间的推移,传统的基于感应签名的模型可能无法对高速公路上运行的新卡车进行最佳分类。为了增强基于签名的分类系统的弹性,本文研究了一种自学习框架,通过集成两种互补的传感器技术:电感回路传感器和光探测和测距(LiDAR)传感器来解决分类系统过时问题。在该框架中,基于激光雷达的联邦公路管理局(FHWA)分类模型作为数据标记平台,生成类别标签,用于验证和更新传统的基于签名的模型。其次,实现了一个自适应迁移学习框架,在不影响计算效率的情况下提高传统的基于归纳签名的分类模型的性能。该框架展示了基于归纳签名的FHWA分类模型的弹性增强,该模型通过智能系统更新来适应车辆随时间的转换,同时使用一种方法,通过利用存储在遗留模型中的信息,显著减少了定期模型校准的总体负担,从而保留了现有人口的遗留知识。实验表明,该自适应自学习框架在具有明显不同卡车配置的数据集上实现了0.89的总体正确分类率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive Self-Learning Framework for Resilient Vehicle Classification Through the Integration of Inductive Loops and LiDAR Sensors
Inductive loop sensors are widely deployed across the U.S. and can provide vehicle classification data with comparable accuracy to the current axle-based sensor systems when they are enhanced with the inductive signature technology and advanced machine learning models. However, the existing truck population is expected to turnover and be replaced with newer models that may generate distinct inductive signature characteristics. Consequently, legacy inductive signature-based models may not perform optimally in classifying newer trucks operating on the highways over time. To enhance the resilience of the signature-based classification system, this paper investigated a self-learning framework to address the classification system obsolescence through the integration of two complementary sensor technologies: Inductive loop sensors and Light Detection and Ranging (LiDAR) sensors. In this framework, the LiDAR-based Federal Highway Administration (FHWA) classification model served as a data labeling platform to generate class labels for validating and updating the legacy signature-based model. Next, an adaptive transfer learning framework was implemented to improve the performance of a legacy inductive signature-based classification model without compromising computation efficiency. This framework demonstrates the resilience enhancement of the inductive signature-based FHWA classification model with an intelligent system update to accommodate vehicle transition over time while retaining legacy knowledge of the pre-existing population using a methodology that significantly reduces the overall burden of periodic model calibration by utilizing the information stored in the legacy model. The experiment demonstrates that this adaptive self-learning framework achieves an overall correct classification rate of 0.89 on a dataset with distinctively different truck configurations.
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5.40
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