심층학습 기법을 활용한 효과적인 타이어 마모도 분류 및 손상 부위 검출 알고리즘
Efficient Tire Wear and Defect Detection Algorithm Based on Deep Learning
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초록

Tire wear and defect are important factors for safe driving condition. These defects are generally inspected by some specialized experts or very expensive equipments such as stereo depth camera and depth gauge. In this paper, we propose tire safety vision inspector based on deep neural network (DNN). The status of tire wear is categorized into three: 'safety', 'warning', and 'danger' based on depth of tire tread. We propose an attention mechanism for emphasizing the feature of tread area. The attention-based feature is concatenated to output feature maps of the last convolution layer of ResNet-101 to extract more robust feature. Through experiments, the proposed tire wear classification model improves 1.8% of accuracy compared to the existing ResNet-101 model. For detecting the tire defections, the developed tire defect detection model shows up-to 91% of accuracy using the Mask R-CNN model. From these results, we can see that the suggested models are useful for checking on the safety condition of working tire in real environment.

키워드

Tire Wear ClassificationTire Defect DetectionDeep LearningAttentionClassificationObject DetectionSemantic Segmentation
제목
심층학습 기법을 활용한 효과적인 타이어 마모도 분류 및 손상 부위 검출 알고리즘
제목 (타언어)
Efficient Tire Wear and Defect Detection Algorithm Based on Deep Learning
저자
박혜진이영운김병규
DOI
10.9717/kmms.2021.24.8.1026
발행일
2021-08
저널명
멀티미디어학회논문지
24
8
페이지
1026 ~ 1034