选择性中值滤波器对使用深度学习模型的龋齿分类系统的影响

L. Megalan Leo, T. Reddy, A. Simla
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引用次数: 0

摘要

准确的龋齿分类对于有效的口腔保健至关重要。滤镜有助于在不降低图像质量的情况下增加为调查拍摄的照片的曝光度。选择性中值滤波器是一种选择的预处理技术,有助于减少捕获图像中的噪声。龋齿分类系统是一种用于检测给定输入图像中是否存在龋齿的模型。龋齿分类系统是利用传统的人工神经网络技术发展起来的。深度学习模型是能够从数据集中可用的原始图像中学习特征的人工神经网络模型。如果这个原始图像有噪声,那么它会严重影响深度学习模型的准确性。本文分析了预处理技术对分类精度的影响。最初,在不应用任何预处理技术的情况下,在深度学习模型上拍摄原始图像进行训练。本研究使用深度学习模型研究了选择性中值滤波对龋齿分类系统的影响。这项研究背后的动机是通过减少噪音、去除伪影和保留牙科射线照片中的重要细节来提高龋齿诊断的准确性和可靠性。实验结果表明,选择性中值滤波的实现显著提高了深度学习模型的性能。混合神经网络(HNN)分类器在选择性中值滤波的情况下实现了96.15%的准确率,优于未经预处理的85.07%的准确率。该研究强调了选择性中值滤波在增强龋齿分类系统方面的理论贡献,并强调了其对牙科诊所的实际意义,提供了更好的诊断能力和更好的患者结果。
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Impact of Selective median filter on dental caries classification system using deep learning models
Accurate classification of dental caries is crucial for effective oral healthcare. Filters help to increase exposure of the picture taken for the investigation without degrading image quality. Selective median filter is the chosen preprocessing technique that helps to reduce the noise present in the captured image. Dental caries classification system is a model used to detect the presence of cavity in the given input image. Dental caries classification system is evolved with the use of conventional techniques to artificial neural network. Deep learning models are the artificial neural network models that can able to learn the features from the raw images available in the dataset. If this raw image has noise, then it severely affects the accuracy of the deep learning models. In this paper, impact of the preprocessing technique on the classification accuracy is analyzed. Initially, raw images are taken for training on deep learning models without applying any preprocessing technique. This study investigates the impact of Selective median filtering on a dental caries classification system using deep learning models. The motivation behind this research is to enhance the accuracy and reliability of dental caries diagnosis by reducing noise, removing artifacts, and preserving important details in dental radiographs. Experimental results demonstrate that the implementation of Selective median filtering significantly improves the performance of the deep learning model. The hybrid neural network (HNN) classifier achieves an accuracy of 96.15% with Selective median filtering, outperforming the accuracy of 85.07% without preprocessing. The study highlights the theoretical contribution of Selective median filtering in enhancing dental caries classification systems and emphasizes the practical implications for dental clinics, offering improved diagnostic capabilities and better patient outcomes.
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