A Spiking Neural Network for Tooth Chromaticity Detection

Junyu Yao, Jianxing Wu, F. Liang, Guohe Zhang
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Abstract

In recent years, traditional tooth Chromaticity detection technology has been unable to meet the needs of intelligence and efficiency. In this paper, we propose a spiking neural network model for tooth chromaticity detection. First, a training method of Tempotron supervised learning rules combined with linear decay weight momentum is proposed. Aiming at different training stages, the process of the network weight update is improved. Second, a data set specifically for tooth chromaticity detection is established. According to the common dental chromatic lesions in clinical dentistry, such as fluorosis and tetracycline teeth, the chromaticity of teeth is divided into four categories. Experimental results using self-built datasets show that the task accuracy of the network is as high as 96.67%, and the convergence speed of the network has also been significantly improved.
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基于脉冲神经网络的牙齿色度检测
近年来,传统的牙齿色度检测技术已经不能满足智能化和高效化的需求。本文提出了一种用于牙齿色度检测的尖峰神经网络模型。首先,提出了一种结合线性衰减权动量的Tempotron监督学习规则训练方法。针对不同的训练阶段,改进了网络权值更新的过程。其次,建立了牙齿色度检测专用数据集。根据临床牙科中常见的牙齿色度病变,如氟斑牙、四环素牙等,将牙齿色度分为四类。使用自建数据集的实验结果表明,该网络的任务准确率高达96.67%,网络的收敛速度也得到了显著提高。
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