2021
DOI: 10.3390/sym14010033
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Spatial-Temporal 3D Residual Correlation Network for Urban Traffic Status Prediction

Abstract: Accurate traffic status prediction is of great importance to improve the security and reliability of the intelligent transportation system. However, urban traffic status prediction is a very challenging task due to the tight symmetry among the Human–Vehicle–Environment (HVE). The recently proposed spatial–temporal 3D convolutional neural network (ST-3DNet) effectively extracts both spatial and temporal characteristics in HVE, but ignores the essential long-term temporal characteristics and the symmetry of hist… Show more

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Cited by 5 publications
(3 citation statements)
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“…The CNN [29] is also widely used to extract spatial dependencies from traffic data. CNN can effectively capture spatial features in traffic data through convolution operations; however, traditional CNN is designed based on image data with Euclidean structure and cannot be directly applied to deal with spatial dependencies in traffic data.…”
Section: Traffic Speed Prediction With Deep Learningmentioning
confidence: 99%
“…The CNN [29] is also widely used to extract spatial dependencies from traffic data. CNN can effectively capture spatial features in traffic data through convolution operations; however, traditional CNN is designed based on image data with Euclidean structure and cannot be directly applied to deal with spatial dependencies in traffic data.…”
Section: Traffic Speed Prediction With Deep Learningmentioning
confidence: 99%
“…As an improvement, we propose a regression metric based on the Hassanat distance, which is bounded between 0 and 1 and therefore does not allow any extremely false prediction to dominate the assessment of the regression model. Here we revisit the mean Hassanat distance (MHD), which produces values between 0, high performance, and 1, low performance 12,25 . To have an accuracy-like measure, we propose the use of the mean Hassanat similarity percentage, which is bounded in the range [0, 100%],…”
Section: Related Workmentioning
confidence: 99%
“…The fourth article, "Spatial-Temporal 3D Residual Correlation Network for Urban Traffic Status Prediction" by Bao et al [4], innovates by proposing a novel spatial-temporal 3D residual correlation network (ST-3DRCN) for urban traffic status prediction. Diverse data sets are analyzed, showing how the new model outperforms its rivals.…”
mentioning
confidence: 99%