An Effective Imputation Method Using Data Enrichment for Missing Data of Loop Detectors in Intelligent Traffic Control Systems

Remote. Sens. Pub Date : 2023-07-01 DOI:10.3390/rs15133374
Payam Gouran, M. Nadimi-Shahraki, A. Rahmani, S. Mirjalili
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Abstract

In intelligent traffic control systems, the features extracted by loop detectors are insufficient to accurately impute missing data. Most of the existing imputation methods use only these extracted features, which leads to the construction of data models that cannot fulfill the required accuracy. This deficiency is the main motivation to propose an enrichment imputation method for loop detectors namely EIM-LD, in which the imputation accuracy is increased for different missing patterns and ratios by introducing a data enrichment technique using statistical multi-class labeling. It first enriches the clean data by adding a statistical multi-class label, including C1…Cn classes. Then, the class of samples in the missed-volume data is labeled using the best data model constructed from the labeled clean data by five different classifiers. Experts of the traffic control department in Isfahan city determined classes of the statistical multi-class label for n = 5 (class labels), and we also developed subclass labels (n = 20) since the number of samples in the subclass labels was sufficient. Next, the enriched data are divided into n datasets, each of them is imputed independently using various imputation methods, and their results are finally merged. To evaluate the impact of using the proposed method, the original data, including missing volumes, are first imputed without our enrichment method. Then, the proposed method’s accuracy is evaluated by considering two class labels and subclass labels. The experimental and statistical results prove that the proposed EIM-LD method can enrich the real data collected by loop detectors, by which the comparative imputation methods construct a more accurate data model. In addition, using subclass labels further enhances the imputation method’s accuracy.
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基于数据充实的智能交通控制系统环路检测器缺失数据补全方法
在智能交通控制系统中,由环路检测器提取的特征不足以准确地推测缺失数据。现有的归算方法大多只使用这些提取的特征,导致构建的数据模型不能满足所要求的精度。这一缺陷是提出一种用于环路检测器的富集补全方法的主要动机,即EIM-LD,该方法通过引入统计多类标记的数据富集技术来提高不同缺失模式和比例的补全精度。它首先通过添加一个统计多类标签(包括C1…Cn类)来丰富干净的数据。然后,使用由五个不同的分类器从标记的干净数据构建的最佳数据模型对缺失量数据中的样本类别进行标记。伊斯法罕市交通管制部门的专家为n = 5(类标签)确定了统计多类标签的类别,由于子类标签中的样本数量足够,我们还开发了子类标签(n = 20)。接下来,将丰富的数据分成n个数据集,每个数据集分别使用不同的imputation方法进行独立的imputation,最后对它们的结果进行合并。为了评估使用所提出的方法的影响,首先在没有我们的富集方法的情况下输入原始数据,包括缺失的体积。然后,通过考虑两个类标签和子类标签来评估所提方法的准确性。实验和统计结果表明,所提出的EIM-LD方法可以丰富环路检测器收集的真实数据,从而使比较imputation方法能够构建更精确的数据模型。此外,使用子类标签进一步提高了方法的准确率。
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