Syefrida Yulina, Hoky Nawa
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引用次数: 0

摘要

在技术进步的今天,通过面部进行个人辅助可以由复杂的机器和机器人来完成。它的一个应用是使用数据挖掘进行个人识别。但在进行数据训练和数据分类之前,需要进行数据收集和数据清洗或数据预处理的过程。目前,Caltex廖内理工学院用于个人识别的人脸数据集仍然是原始数据的形式,即未经预处理的图像集合的形式。因此,本研究将对采集到的图像数据进行图像预处理,使其成为更清晰的信息来源,可供后期使用。本研究使用的数据为加德士廖内理工学院学生的图像数据或照片。在人脸图像预处理阶段使用OpenCV库,使用Python编程语言。图片由500名学生收集,5名学生。本研究的结果是由280张成功通过灰度、裁剪、调整大小和归一化阶段的图像组成的Caltex廖内理工学院学生的个人识别数据集。该数据集存储在文件data_norm.npz中。通过白盒测试来确定图像预处理阶段应用的准确性,测试结果表明所应用的所有功能基路径都符合圈复杂度及其独立路径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dataset Gambar Wajah untuk Analisis Personal Identification
In today's era, which is supported by technological advances, personal assistance through the face can be carried out by sophisticated machines and robots. One of its applications is personal identification using data mining. But before conducting data training and data classification, it is necessary to carry out the process of data collection and data cleaning or data pre-processing. Currently the face dataset for personal identification at the Caltex Riau Polytechnic in particular is still in the form of raw data, namely in the form of a collection of images that have not been pre-processed. Therefore, this research will perform image preprocessing to clean up the image data that has been collected so that the data can become a cleaner source of information and can be used at a later stage. The data used in this study are image data or photos of Caltex Riau Polytechnic students. At the facial image pre-processing stage using the OpenCV library using the Python programming language. Images collected by 500 students for 5 students. The results of this study are the personal identification dataset of Caltex Riau Polytechnic students consisting of 280 images that have successfully passed the stages of grayscaling, cropping, resizing and Normalization. This dataset is stored in the file data_norm.npz. White box testing is carried out to determine the accuracy of the application of the image pre-processing stage with the test results stating that all functional basis paths applied are in accordance with the cyclometic complexity and its independent path.
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