Kernel Sparse Representation with Hybrid Regularization for On-Road Traffic Sensor Data Imputation

The problem of missing values (MVs) in traffic sensor data analysis is universal in current intelligent transportation systems because of various reasons, such as sensor malfunction, transmission failure, etc. Accurate imputation of MVs is the foundation of subsequent data analysis tasks since most...

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Main Authors: Xiaobo Chen, Cheng Chen, Yingfeng Cai, Hai Wang, Qiaolin Ye
Format: Article
Language:English
Published: MDPI AG 2018-08-01
Series:Sensors
Subjects:
Online Access:http://www.mdpi.com/1424-8220/18/9/2884
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spelling doaj-430784f0b3144c70b92beb0aeb5d1bfe2020-11-24T22:04:17ZengMDPI AGSensors1424-82202018-08-01189288410.3390/s18092884s18092884Kernel Sparse Representation with Hybrid Regularization for On-Road Traffic Sensor Data ImputationXiaobo Chen0Cheng Chen1Yingfeng Cai2Hai Wang3Qiaolin Ye4Automotive Engineering Research Institute, Jiangsu University, Zhenjiang 212013, ChinaSchool of Automotive and Traffic Engineering, Jiangsu University, Zhenjiang 212013, ChinaAutomotive Engineering Research Institute, Jiangsu University, Zhenjiang 212013, ChinaSchool of Automotive and Traffic Engineering, Jiangsu University, Zhenjiang 212013, ChinaCollege of Information Science and Technology, Nanjing Forestry University, Nanjing 210037, ChinaThe problem of missing values (MVs) in traffic sensor data analysis is universal in current intelligent transportation systems because of various reasons, such as sensor malfunction, transmission failure, etc. Accurate imputation of MVs is the foundation of subsequent data analysis tasks since most analysis algorithms need complete data as input. In this work, a novel MVs imputation approach termed as kernel sparse representation with elastic net regularization (KSR-EN) is developed for reconstructing MVs to facilitate analysis with traffic sensor data. The idea is to represent each sample as a linear combination of other samples due to inherent spatiotemporal correlation, as well as periodicity of daily traffic flow. To discover few yet correlated samples and make full use of the valuable information, a combination of l1-norm and l2-norm is employed to penalize the combination coefficients. Moreover, the linear representation among samples is extended to nonlinear representation by mapping input data space into high-dimensional feature space, which further enhances the recovery performance of our proposed approach. An efficient iterative algorithm is developed for solving KSR-EN model. The proposed method is verified on both an artificially simulated dataset and a public road network traffic sensor data. The results demonstrate the effectiveness of the proposed approach in terms of MVs imputation.http://www.mdpi.com/1424-8220/18/9/2884sparse representationelastic netkernel methodmissing dataimputation
collection DOAJ
language English
format Article
sources DOAJ
author Xiaobo Chen
Cheng Chen
Yingfeng Cai
Hai Wang
Qiaolin Ye
spellingShingle Xiaobo Chen
Cheng Chen
Yingfeng Cai
Hai Wang
Qiaolin Ye
Kernel Sparse Representation with Hybrid Regularization for On-Road Traffic Sensor Data Imputation
Sensors
sparse representation
elastic net
kernel method
missing data
imputation
author_facet Xiaobo Chen
Cheng Chen
Yingfeng Cai
Hai Wang
Qiaolin Ye
author_sort Xiaobo Chen
title Kernel Sparse Representation with Hybrid Regularization for On-Road Traffic Sensor Data Imputation
title_short Kernel Sparse Representation with Hybrid Regularization for On-Road Traffic Sensor Data Imputation
title_full Kernel Sparse Representation with Hybrid Regularization for On-Road Traffic Sensor Data Imputation
title_fullStr Kernel Sparse Representation with Hybrid Regularization for On-Road Traffic Sensor Data Imputation
title_full_unstemmed Kernel Sparse Representation with Hybrid Regularization for On-Road Traffic Sensor Data Imputation
title_sort kernel sparse representation with hybrid regularization for on-road traffic sensor data imputation
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2018-08-01
description The problem of missing values (MVs) in traffic sensor data analysis is universal in current intelligent transportation systems because of various reasons, such as sensor malfunction, transmission failure, etc. Accurate imputation of MVs is the foundation of subsequent data analysis tasks since most analysis algorithms need complete data as input. In this work, a novel MVs imputation approach termed as kernel sparse representation with elastic net regularization (KSR-EN) is developed for reconstructing MVs to facilitate analysis with traffic sensor data. The idea is to represent each sample as a linear combination of other samples due to inherent spatiotemporal correlation, as well as periodicity of daily traffic flow. To discover few yet correlated samples and make full use of the valuable information, a combination of l1-norm and l2-norm is employed to penalize the combination coefficients. Moreover, the linear representation among samples is extended to nonlinear representation by mapping input data space into high-dimensional feature space, which further enhances the recovery performance of our proposed approach. An efficient iterative algorithm is developed for solving KSR-EN model. The proposed method is verified on both an artificially simulated dataset and a public road network traffic sensor data. The results demonstrate the effectiveness of the proposed approach in terms of MVs imputation.
topic sparse representation
elastic net
kernel method
missing data
imputation
url http://www.mdpi.com/1424-8220/18/9/2884
work_keys_str_mv AT xiaobochen kernelsparserepresentationwithhybridregularizationforonroadtrafficsensordataimputation
AT chengchen kernelsparserepresentationwithhybridregularizationforonroadtrafficsensordataimputation
AT yingfengcai kernelsparserepresentationwithhybridregularizationforonroadtrafficsensordataimputation
AT haiwang kernelsparserepresentationwithhybridregularizationforonroadtrafficsensordataimputation
AT qiaolinye kernelsparserepresentationwithhybridregularizationforonroadtrafficsensordataimputation
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