QR码图像中的噪声检测

A. B. Wardak, Jawad Rasheed, Amani Yahyaoui, Sadaf Waziry, Erdal Alimovski, Mirsat Yesiltepe
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引用次数: 2

摘要

QR码是用于编码信息的符号,如关键标识符(网站地址,产品等),可以使用基于图像的技术进行电子打印和扫描。然而,由于一些环境或机械因素,它可能包括印刷或扫描时的噪音。因此,本研究分析了各种机器学习模型来检测QR码中是否存在噪声。为此,我们首先通过创建14000张QR码图像来生成自己的数据集,然后通过在原始QR码图像中添加一些噪声来增强数据集。后来,它利用了几种机器学习、深度学习和预训练模型来从原始图像中分离噪声图像。实验结果表明,ResNet101和Xception模型在准确率、召回率、f1-score和精度方面均达到100%,优于其他模型。此外,支持向量机(SVM)在训练超过70%的数据集时,在测试集上的准确率也达到了99.6%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Noise Presence Detection in QR Code Images
A quick response (QR) code is symbols used to encode information such as key identifiers (website addresses, product, etc.) that can be printed and scanned electronically using image-based technology. However, it may include noise at the time of printing or scanning due to some environmental or mechanical factors. Therefore, the study analyzes various machine learning models to detect noise presence in QR code. For this, we first generated own dataset by creating 14,000 images of QR code, and then enhanced the dataset by adding several noises to the original QR code images. Later, it exploits several machine learning, deep learning and pre-trained models to segregate noisy images from original images. Experimental results show that ResNet101 and Xception models outperformed others by attaining 100% accuracy, recall, f1-score, and precision, each. Besides these, support vector machine (SVM) also performed better by accomplishing 99.6% accuracy on test set when trained over 70% of dataset.
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