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Vehicle Load Point Monitoring Data
- Citation Author(s):
- Submitted by:
- Boqiang Xu
- Last updated:
- Mon, 02/19/2024 - 04:15
- DOI:
- 10.21227/7chy-8b31
- Data Format:
- License:
- Categories:
- Keywords:
Abstract
This is the relevant data in "Monocular Homography Estimation and Positioning Method for the Spatial-Temporal Distribution of Vehicle Loads Identification".
Real-time measurement of the traffic load spatial-temporal distribution is crucial for bridge health monitoring and operation maintenance. Despite the significant progress made by computer vision-based measurement methods, their accuracy and automation still require improvement. This paper proposes a novel method that eliminates the need for on-site calibration. Firstly, the YOLO-v5 model is employed to detect vehicles in surveillance videos. Subsequently, this paper proposes a prediction model for the vehicle equivalent concentrated load that combines a pre-trained convolutional neural network (CNN) coding model and a BP neural network. The prediction model's error is constrained within 3%. Finally, this paper presents a homography matrix calculation algorithm based on the geometric priori information of lane lines, which enables the transformation of image coordinates into actual coordinates without on-site marking. The effectiveness of the proposed algorithm has been evaluated through a field test and benchmarked against traditional methods. The result shows that the proposed method outperforms traditional approaches, manifesting in a notable reduction in the need for manual calibration and a substantial improvement in the accuracy of the model.
Image.zip: Standardized size vehicle images.
GroundTruth: Normalized coordinates of point O corresponding to each image in Image.zip, where the data in the ith row corresponds to the image "i.jpg" in Image.zip.
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