基于机器学习的图像处理避免未经授权的进入

C. Peña, Ciro Rodríguez, Israel Arellano Romero
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引用次数: 1

摘要

面部识别系统的建议,通过面部识别的多种功能来提高安全性,例如在2019冠状病毒病期间为采取适当保护措施的人提供便利,以及在寻求隐藏身份时提供安全保障。该方法考虑使用Python和OpenCV等工具,以及Eigen Faces, Fisher Faces和LBPH Faces等模型,作为分析单元,被认为是照片和视频的一部分,捕捉面部表情,然后用面部识别算法训练它们的模式。结果表明,LBPH人脸获得的置信度值小于70,识别确定性为95%,识别时间较短,提高了人脸识别的准确性,并且随着数据量的增加,人脸识别的准确性也有所提高,对人身安全的信心也有所提高。
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Processing of Images Based on Machine Learning to Avoid Unauthorized Entry
The proposal of a facial recognition system to increase security, through facial recognition with multiple utilities such as facilitating the access of people with adequate protection measures in times of Covid-19, as well as security when seeking to hide their identity. The methodology considers the use of tools such as Python and OpenCV, as well as models such as Eigen Faces, Fisher Faces, and LBPH Faces, as units of analysis are considered photographs and portions of the video that capture facial expressions that then their patterns are trained with facial recognition algorithms. The results obtained show that the LBPH Faces obtained confidence values lower than 70, with a 95% certainty of recognition and a shorter recognition time, improving the accuracy of facial recognition, also with the increase of the data was achieved to improve the accuracy of recognition as well as improve confidence regarding the safety of people.
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