A Deep Learning and Transfer Learning Approach for Vehicle Damage Detection

According to the U.S. Department of Transportation, there is an average of six million motor vehicle crashes every year in the United States. For insurance companies, it is very time-consuming and expensive to process claims for detecting and classifying vehicle damages; thus, deep learning techniqu...

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Main Authors: Lin Li, Koshin Ono, Chun-Kit Ngan
Format: Article
Language:English
Published: LibraryPress@UF 2021-04-01
Series:Proceedings of the International Florida Artificial Intelligence Research Society Conference
Online Access:https://journals.flvc.org/FLAIRS/article/view/128473
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author Lin Li
Koshin Ono
Chun-Kit Ngan
author_facet Lin Li
Koshin Ono
Chun-Kit Ngan
author_sort Lin Li
collection DOAJ
description According to the U.S. Department of Transportation, there is an average of six million motor vehicle crashes every year in the United States. For insurance companies, it is very time-consuming and expensive to process claims for detecting and classifying vehicle damages; thus, deep learning techniques have been used to automate this process to reduce the time and the cost. In this paper, Mask R-CNN is used for image segmentation to identify and crop vehicles from images. Then a convolutional neural network (CNN) model is built to classify whether or not the vehicles have damages. In addition, transfer learning is utilized in both image segmentation and classification phases to help build the models for vehicle detection and damage detection, using the pre-trained weights from Microsoft COCO dataset and ImageNet, respectively. 864 images of damaged vehicles collected from public websites, such as Google Images, are used in this research. The experiment on the detection of bumper damages has achieved 87.5% accuracy.
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issn 2334-0754
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language English
publishDate 2021-04-01
publisher LibraryPress@UF
record_format Article
series Proceedings of the International Florida Artificial Intelligence Research Society Conference
spelling doaj-art-e86687c121ae4d02b1a391b43575e4a62025-08-20T03:07:16ZengLibraryPress@UFProceedings of the International Florida Artificial Intelligence Research Society Conference2334-07542334-07622021-04-013410.32473/flairs.v34i1.12847362867A Deep Learning and Transfer Learning Approach for Vehicle Damage DetectionLin Li0Koshin OnoChun-Kit NganSeattle UniversityAccording to the U.S. Department of Transportation, there is an average of six million motor vehicle crashes every year in the United States. For insurance companies, it is very time-consuming and expensive to process claims for detecting and classifying vehicle damages; thus, deep learning techniques have been used to automate this process to reduce the time and the cost. In this paper, Mask R-CNN is used for image segmentation to identify and crop vehicles from images. Then a convolutional neural network (CNN) model is built to classify whether or not the vehicles have damages. In addition, transfer learning is utilized in both image segmentation and classification phases to help build the models for vehicle detection and damage detection, using the pre-trained weights from Microsoft COCO dataset and ImageNet, respectively. 864 images of damaged vehicles collected from public websites, such as Google Images, are used in this research. The experiment on the detection of bumper damages has achieved 87.5% accuracy.https://journals.flvc.org/FLAIRS/article/view/128473
spellingShingle Lin Li
Koshin Ono
Chun-Kit Ngan
A Deep Learning and Transfer Learning Approach for Vehicle Damage Detection
Proceedings of the International Florida Artificial Intelligence Research Society Conference
title A Deep Learning and Transfer Learning Approach for Vehicle Damage Detection
title_full A Deep Learning and Transfer Learning Approach for Vehicle Damage Detection
title_fullStr A Deep Learning and Transfer Learning Approach for Vehicle Damage Detection
title_full_unstemmed A Deep Learning and Transfer Learning Approach for Vehicle Damage Detection
title_short A Deep Learning and Transfer Learning Approach for Vehicle Damage Detection
title_sort deep learning and transfer learning approach for vehicle damage detection
url https://journals.flvc.org/FLAIRS/article/view/128473
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AT koshinono adeeplearningandtransferlearningapproachforvehicledamagedetection
AT chunkitngan adeeplearningandtransferlearningapproachforvehicledamagedetection
AT linli deeplearningandtransferlearningapproachforvehicledamagedetection
AT koshinono deeplearningandtransferlearningapproachforvehicledamagedetection
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