论文标题
基于全景X光片的深度转移学习的人类性别预测
Human Gender Prediction Based on Deep Transfer Learning from Panoramic Radiograph Images
论文作者
论文摘要
全景牙齿射线照相(PDR)图像处理是法医医学中最广泛使用的手动方法之一。在PDR图像的帮助下,可以通过分析表达性二态性的骨骼结构来执行一个人的生物性别确定。手动方法需要在度量单元中进行广泛的下颌参数测量。除了耗时,这些方法还需要雇用经验丰富的专业人员。在这种情况下,由于它们的高处理速度,准确性和稳定性,深度学习模型如今广泛用于放射学图像的自动分析。在我们的研究中,准备了由24,000个牙科全景图像组成的数据集用于二进制分类,并使用转移学习方法来加速训练并提高我们提出的Densenet121深度学习模型的性能。使用转移学习方法,不用从头开始学习过程,而是事先使用了现有的模式。使用深度传输学习(DTL)模型VGG16,RESNET50和EDIDENETB6进行了广泛的比较,以评估PDR图像中提出模型的分类性能。根据比较分析的发现,所提出的模型通过在性别分类中达到97.25%的成功率优于其他方法。
Panoramic Dental Radiography (PDR) image processing is one of the most extensively used manual methods for gender determination in forensic medicine. With the assistance of the PDR images, a person's biological gender determination can be performed through analyzing skeletal structures expressing sexual dimorphism. Manual approaches require a wide range of mandibular parameter measurements in metric units. Besides being time-consuming, these methods also necessitate the employment of experienced professionals. In this context, deep learning models are widely utilized in the auto-analysis of radiological images nowadays, owing to their high processing speed, accuracy, and stability. In our study, a data set consisting of 24,000 dental panoramic images was prepared for binary classification, and the transfer learning method was used to accelerate the training and increase the performance of our proposed DenseNet121 deep learning model. With the transfer learning method, instead of starting the learning process from scratch, the existing patterns learned beforehand were used. Extensive comparisons were made using deep transfer learning (DTL) models VGG16, ResNet50, and EfficientNetB6 to assess the classification performance of the proposed model in PDR images. According to the findings of the comparative analysis, the proposed model outperformed the other approaches by achieving a success rate of 97.25% in gender classification.