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首页> 外文期刊>Jurnal RESTI: Rekayasa Sistem dan Teknologi Informasi >Identifikasi Pengenalan Wajah Perokok Menggunakan Metode Principal Component Analysis
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Identifikasi Pengenalan Wajah Perokok Menggunakan Metode Principal Component Analysis

机译:使用主成分分析方法识别吸烟者面部识别

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Cigarettes are one of the biggest contributors to preventable causes of death in society. Cigarette smoke contains various chemicals that can cause various diseases such as chronic coughs, lung cancer, and other health problems. Cigarette smoke not only harms the health of the smoker itself but also the health of others. Sometimes written warnings about smoking bans are often not followed by active smokers. This study aims to identify smokers 'facial recognition in order to recognize and identify smokers' faces who do not obey the rules by using dimensional reduction techniques oriented to the Principal component Analysis (PCA) method. Principal Component Analysis will later be integrated with the Eigenface and Eucladean analysis algorithms to reduce the image size in obtaining the best value vectors to simplify the face image in the input image space and look for the threshold value which is the threshold that the test data must pass so that it can prove the data value. testing becomes recognizable data through the calculation of the distance for each weight. In this study, there were 8 smoker faces with 5 different facial poses that were tested for 40 face recognition experiments and resulted in 34 correct smoker face recognition and 6 wrong smoker face recognition with an accuracy rate of 92.5% and a long face recognition process time of 80. second. This test has proven that the Eigenface and Euclidean distance in the Principal Component Analysis (PCA) are able to handle and recognize smoker's facial image data well.
机译:香烟是可预防社会死亡原因的最大贡献者之一。香烟烟雾含有各种化学品,可导致慢性咳嗽,肺癌和其他健康问题等各种疾病。香烟烟雾不仅伤害了吸烟者本身的健康,而且伤害了他人的健康。有时对吸烟禁令的书面警告往往不是活跃的吸烟者。本研究旨在识别吸烟者的面部认可,以识别并识别通过使用定向到主成分分析(PCA)方法的尺寸减少技术不服从规则的吸烟者的面部。稍后将与EIGENFACE和EUCLADEAN分析算法集成主成分分析,以减少获得最佳值向量的图像尺寸,以简化输入图像空间中的面部图像,并查找阈值,该阈值是测试数据必须的阈值通过使其可以证明数据值。通过计算每个重量的距离来测试变得可识别的数据。在这项研究中,有8个吸烟者面向40个面孔姿势,测试了40个面部识别实验,并导致34个正确的吸烟者面部识别和6个错误的吸烟者面部识别,精度率为92.5%和长脸识别过程时间80.第二。该测试证明了主成分分析(PCA)中的特征面和欧几里德距离能够处理和识别吸烟者的面部图像数据。

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