通过基于 YOLO 的物体检测模型进行多粒度牙齿分析,实现有效的牙齿检测和分类

Samah W. G. AbuSalim, Nordin Zakaria, Aarish Maqsood, Abdul Saboor, Yew Kwang Hooi, Norehan Mokhtar, Said Jadid Abdulkadir
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摘要

牙齿的准确检测和分类是牙科疾病诊断的第一步。然而,同一类牙齿的表面外观差异很大。此外,复杂的几何结构也给学习不同类别牙齿的鉴别特征带来了挑战。由于这些复杂的特征,牙齿分类是深度学习中具有挑战性的研究领域之一。为了解决上述问题,本研究提出了使用 YOLO 模型在不同粒度水平上进行局部特征提取的方法。然而,这需要一个细粒度的口腔内图像数据集。为了满足这一要求,我们开发了三个粒度级别(两颗、四颗和七颗牙齿级别)的数据集。使用 2,790 张图像对 YOLOv5、YOLOv6 和 YOLOv7 模型进行了训练。结果表明,YOLOv6 在两级分类问题上表现出色。该模型的平均精度 (mAP) 值为 94%。然而,随着粒度级别的增加,YOLO 模型的性能有所下降。对于四级和七级分类问题,YOLOv5 的最高 mAP 值分别为 87% 和 79%。结果表明,不同的粒度水平在牙齿检测和分类中发挥着重要作用。随着粒度的降低,YOLO 的性能逐渐下降,尤其是在最细粒度级别。
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Multi-granularity tooth analysis via YOLO-based object detection models for effective tooth detection and classification
Accurate detection and classification of teeth is the first step in dental disease diagnosis. However, the same class of tooth exhibits significant variations in surface appearance. Moreover, the complex geometrical structure poses challenges in learning discriminative features among the different tooth classes. Due to these complex features, tooth classification is one of the challenging research domains in deep learning. To address the aforementioned issues, the presented study proposes discriminative local feature extraction at different granular levels using YOLO models. However, this necessitates a granular intra-oral image dataset. To facilitate this requirement, a dataset at three granular levels (two, four, and seven teeth classes) is developed. YOLOv5, YOLOv6, and YOLOv7 models were trained using 2,790 images. The results indicate superior performance of YOLOv6 for two-class classification problems. The model generated a mean average precision (mAP) value of 94%. However, as the granularity level is increased, the performance of YOLO models decreases. For, four and seven-class classification problems, the highest mAP value of 87% and 79% was achieved by YOLOv5 respectively. The results indicate that different levels of granularity play an important role in tooth detection and classification. The YOLO’s performance gradually decreased as the granularity decreased especially at the finest granular level.
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