2023
DOI: 10.1109/access.2023.3234281
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Smart Traffic Monitoring Through Pyramid Pooling Vehicle Detection and Filter-Based Tracking on Aerial Images

Abstract: Increased traffic density, combined with global population development, has resulted in increasingly congested roads, increased air pollution, and increased accidents. Globally, the overall number of automobiles has expanded dramatically during the last decade. Traffic monitoring in this environment is undoubtedly a significant difficulty in various developing countries. This work introduced a novel vehicle detection and classification system for smart traffic monitoring that uses a convolutional neural networ… Show more

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Cited by 22 publications
(8 citation statements)
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References 37 publications
(28 reference statements)
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“…In [12], the authors developed a backbone architecture with a context data component and attention module to detect vehicles from a real image, which allowed the extraction feature network to improve the deployment of context data and prominent areas. Rafique et al [13] presented a new vehicle recognition and segmentation technique for the monitoring of smart traffic, which employed a CNN for real image classification. Later, the identified vehicles were grouped into distinct subgroups.…”
Section: Related Workmentioning
confidence: 99%
“…In [12], the authors developed a backbone architecture with a context data component and attention module to detect vehicles from a real image, which allowed the extraction feature network to improve the deployment of context data and prominent areas. Rafique et al [13] presented a new vehicle recognition and segmentation technique for the monitoring of smart traffic, which employed a CNN for real image classification. Later, the identified vehicles were grouped into distinct subgroups.…”
Section: Related Workmentioning
confidence: 99%
“…Recurrent-Feature Aware Visualization (RFAV) 56.24 [40] CNN based on Tectofugal-thalamofugal-accessory optic system 84.25 [41] Customized Pyramid Pooling Method (CPPM) 93.13 [42] Proposed Model 93.8…”
Section: Technique Accuracy (%) Studymentioning
confidence: 99%
“…Recurrent-Feature Aware Visualization (RFAV) 51.95 [40] Customized Pyramid Pooling Method (CPPM) 92.22 [42] Feature-balanced pyramid network (FBPN) 91.27 [43] Proposed Model 95.4…”
Section: Technique Accuracy (%) Studymentioning
confidence: 99%
“…In recent years, vehicle detection and classification has been an emerging research area due to its various applications in intelligent traffic management systems. Road Traffic management applications include congestion detection, categorizing the various vehicle types, recognizing doubtful vehicles on the road, and parking management system [1]. All these systems mainly depend on vehicle identification, which has become a significant and crucial issue in aerial imagery [2].…”
Section: Introductionmentioning
confidence: 99%