Panoramic Dental Radiography (PDR) image processing is one of the most extensively used manual methods for gender determination in forensic medicine. 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.
翻译:在法医中,最广泛使用的性别鉴定手册方法之一是泛视牙科放射图象处理; 人工方法要求在计量单位中进行多种人工参数测量; 这些方法不仅耗时,还需要雇用有经验的专业人员; 在这方面,由于目前辐射图象的处理速度、精确度和稳定性很高,在对辐射图象的自动分析中广泛使用了深层次学习模型; 在我们的研究中,为二进制分类编制了一套由24 000个牙科全景图象组成的数据集,并采用了转移学习方法来加快培训,提高我们提议的DenseNet121深层学习模型的性能; 采用转移学习方法,而不是从零开始学习过程,而是使用事先学习的模式; 利用深层转移学习模型VGG16、ResNet50和高效的NetB6进行了广泛的比较,以评估在DR图象中拟议模型的分类性能; 根据比较分析的结果,拟议的模型通过在性别分类中达到97.25%的成功率,超越了其他方法。