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Gender Estimation from Panoramic Dental X-ray Images using Deep Convolutional Networks

机译:使用深度卷积网络从全景牙科X射线图像进行性别估计

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Current techniques for gender estimation from X-ray images, except being time-consuming, require a highly experienced expert to perform the process. Deep convolutional neural networks have shown to be a very successful technique in many computer vision tasks, mainly because of high accuracy, stability, and processing speed. In this paper, we propose a new method to the gender estimation from panoramic dental X-ray images based on analysis of images using deep convolutional neural networks trained to perform a binary classification. Detailed insight is provided into architecture, hyperparameters and training procedure of our best performing model obtaining an accuracy of 94.3% on a test set. Further experiments have been performed to get a better understanding of anatomical structures which carry the most important information for gender estimation. The presented method requires no special knowledge or equipment to be used, and besides high accuracy, it is also extremely fast with only 18ms of processing time per image on a dedicated GPU.
机译:当前的用于从X射线图像进行性别估计的技术除了费时外,还需要经验丰富的专家来执行该过程。在许多计算机视觉任务中,深度卷积神经网络已被证明是一种非常成功的技术,这主要是因为其具有很高的准确性,稳定性和处理速度。在本文中,我们提出了一种新的方法,用于基于全景牙科X射线图像的性别估计,该方法基于使用深度卷积神经网络训练的图像进行分析以进行二进制分类。我们对性能最好的模型的体系结构,超参数和训练过程提供了详细的见解,在测试集上获得了94.3%的准确度。已经进行了进一步的实验,以更好地理解携带对性别估计最重要的信息的解剖结构。提出的方法不需要使用专门的知识或设备,并且除高精度外,它在专用GPU上每张图像的处理时间仅为18ms时也非常快。

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