Vehicle-Damage-Detection Segmentation Algorithm Based on Improved Mask RCNN | IEEE Journals & Magazine | IEEE Xplore

Vehicle-Damage-Detection Segmentation Algorithm Based on Improved Mask RCNN


Mask RCNN network framework model.

Abstract:

Traffic congestion due to vehicular accidents seriously affects normal travel, and accurate and effective mitigating measures and methods must be studied. To resolve traf...Show More
Topic: Artificial Intelligence (AI)-Empowered Intelligent Transportation Systems

Abstract:

Traffic congestion due to vehicular accidents seriously affects normal travel, and accurate and effective mitigating measures and methods must be studied. To resolve traffic accident compensation problems quickly, a vehicle-damage-detection segmentation algorithm based on transfer learning and an improved mask regional convolutional neural network (Mask RCNN) is proposed in this paper. The experiment first collects car damage pictures for preprocessing and uses Labelme to make data set labels, which are divided into training sets and test sets. The residual network (ResNet) is optimized, and feature extraction is performed in combination with Feature Pyramid Network (FPN). Then, the proportion and threshold of the Anchor in the region proposal network (RPN) are adjusted. The spatial information of the feature map is preserved by bilinear interpolation in ROIAlign, and different weights are introduced in the loss function for different-scale targets. Finally, the results of self-made dedicated dataset training and testing show that the improved Mask RCNN has better Average Precision (AP) value, detection accuracy and masking accuracy, and improves the efficiency of solving traffic accident compensation problems.
Topic: Artificial Intelligence (AI)-Empowered Intelligent Transportation Systems
Mask RCNN network framework model.
Published in: IEEE Access ( Volume: 8)
Page(s): 6997 - 7004
Date of Publication: 06 January 2020
Electronic ISSN: 2169-3536

Funding Agency:


References

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