학술논문

ANOMALY DETECTION FOR AN ORAL HEALTH CARE APPLICATION USING ONE CLASS YOLOV3
Document Type
Article
Source
Journal of the Korean Society for Industrial and Applied Mathematics, 26(4), pp.310-322 Dec, 2022
Subject
수학
Language
English
ISSN
1229-0645
1226-9433
Abstract
In this report, we apply an anomaly detection algorithm to a mobile oral health care application. In particular, we have investigated one class YOLOv3 as an anomaly detec- tion model to classify pictures of mouths which will be used as inputs in the following machine learning model. We have achieved outstanding performances by proposing appropriate anno- tation strategies for our data sets and modifying the loss function. Moreover, the model can classify not only oral and non-oral pictures but also output preprocessed pictures that only con- tain the area around the lips by using the predicted bounding box. Thus, the model performs prediction and preprocessing simultaneously.