Improving the process of recognition the treated teeth in the Panoramic images based on the optimal features selection: تحسين عملية التعرف على الأسنان المعالجة في الصور البانورامية بالاعتماد على الاختيار الأمثل للسمات

Alaa Khaled Zakaria, Yasser Khadra, Eid Al-Abboud
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引用次数: 1

Abstract

    Due to the significant development in the field of machine learning and patterns recognitions, the area of image processing has an important role in this context, especially in the field of medical images of various kinds. In this research, we have been developed powerful, simple, cost-effective and more accurate interpretation algorithm for recognition treated teeth In the X-ray images. There are many difficulties in determining the objects such as it is difficult to interpret the radiographic image because there are very subtle differences in X-rays, poor image quality representation and the splitting of all the teeth in the image of radiographic imaging. In this research, comprehensive methodology was proposed that enables the identification of the teeth that have been treated by the optimal features selection. Where the digital image was processed and then extracted statistical features of it using second order statistical and gray level co-occurrence matrix GLCM. Then, the optimal features were chosen, which express the pattern to be recognized, be categorized then to classify the extracted features. The results obtained showed great accuracy in the results obtained, where the features of homogeneity, contrast and correlation were chosen as expressive features of pulp canal therapy with standard deviations, 0.647%, 1.602% and 1.925% respectively, as well as the reconstructed dental crown with standard deviations of the aforementioned features", 1.07%, 2.80% and 0.57%, respectively, because they gave the lowest values of the standard deviation and thus the lowest percentage of error and therefore can be adopted as expressive features of the treated tooth.    
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在对特征的最佳选择改进图形处理的牙齿识别
由于机器学习和模式识别领域的重大发展,图像处理领域在这一背景下具有重要作用,特别是在各种医学图像领域。在本研究中,我们开发了一种功能强大、简单、经济、准确的解释算法,用于识别x射线图像中的治疗牙齿。在确定物体时存在许多困难,例如由于x射线的细微差异,图像质量表现不佳以及放射成像图像中所有牙齿的分裂而难以解释射线图像。在这项研究中,提出了一种综合的方法,可以通过最优的特征选择来识别已经治疗过的牙齿。其中对数字图像进行处理,然后利用二阶统计量与灰度共生矩阵GLCM提取其统计特征。然后,选取表达待识别模式的最优特征,对提取的特征进行分类。所得结果具有较高的准确性,其中选择同质性、对比性和相关性特征作为髓管治疗的表达特征,其标准差分别为0.647%、1.602%和1.925%,选择重建牙冠的上述特征的标准差分别为1.07%、2.80%和0.57%。因为它们给出了最低的标准偏差值,因此误差百分比最低,因此可以作为治疗牙齿的表达特征。
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