通过牙齿图像增强和分析自动识别人类

J. D. dela Cruz, Ramon G. Garcia, Jian Chelly Czyrylle V. Cueto, Sherilyn C. Pante, Christopher Glad V. Toral
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引用次数: 2

摘要

每个人都有一个独特的身份,比如牙齿特征,其中牙齿形态、大小、形状、缺失的牙齿和其他特征都是已知的。因此,当发现一个人的身份时,根据手头的身体来建立牙齿轮廓是一个准确的开始。然而,牙科分析需要使用放射照相,这被证明对法医牙医(和活着的病人)是有害的。本研究试图开发一个完整的识别系统,将有助于牙科法医不使用辐射。研究人员使用循环神经网络(RNN)进行机器学习,其中需要对特征向量进行分类。还开发了一种成像设备,用于使用USB相机捕获人的牙齿,并使用OpenCV图像拼接,对比度有限自适应直方图均衡化和Smith Waterman算法建立了缝合,增强和分析牙齿图像的数据库。使用自适应哈里斯角检测算法对图像进行分析,该算法通过增强和分析的上下颌牙齿俯视图图像来识别人。对匹配和不匹配数据的计算可靠性为83.33%,对程序计算正确面积的能力的计算精度为94.8393%。未来的研究可能会探索除牙齿面积外的其他因素作为关键点。
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Automated Human Identification through Dental Image Enhancement and Analysis
Every individual has a unique identity like dental feature in which variations in tooth morphology, size, shape, missing tooth, and other characteristics are known. Hence, when uncovering a person’s identity, developing a dental profile based on the body at hand is an accurate start. However, dental profiling requires the use of radiography, which is proven to be harmful to the forensic dentist (and a living patient). This study attempted to develop a complete identification system that will aid in dental forensics without the use of radiation. The researchers used the Recurrent Neural Network (RNN) for machine learning wherein a feature vector is to be classified. An imaging device was also developed to capture the teeth of a person with the use of USB Camera, and a database of stitched, enhanced, and analyzed dental images using Image Stitching with OpenCV, Contrast Limited Adaptive Histogram Equalization and Smith Waterman Algorithms. The images were analyzed using Adaptive Harris Corner Detection Algorithm, which in turn identifies a person through the enhanced and analyzed top view images of the teeth in upper and lower jaw. The computed reliability from the matched and mismatched data is 83.33% and the computed accuracy for the ability of the program to compute the correct area is 94.8393%. Future studies may explore other factors as key points aside from tooth area.
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