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Real and Fake Label Image Classification Algorithm Based on HOG and SVM

机译:基于HOG和SVM的真假标签图像分类算法

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As the market for second-hand luxury goods continues to expand, authenticity must be verified when trading. In order to solve the problems of low efficiency and high cost of manually identifying luxury goods, this paper proposes a luxury identification method based on HOG feature extraction and SVM. This method uses a black label image of Gucci bags with anti-counterfeiting as an example. First, Collect true and fake sample photos, group and label the photos, make positive and negative samples, and perform normalization processing, and then extract the true and fake label HOG features, and then train the SVM as a true and fake label image classifier, using 200 test experiments were performed on the test samples, and the experimental results show that the accuracy rate of true and fake label image classification of this method reaches 90.25%, which can well identify the true and false labels under different lighting conditions.
机译:随着二手奢侈品市场的不断扩大,交易时必须验证真实性。为了解决手工识别奢侈品效率低,成本高的问题,提出了一种基于HOG特征提取和支持向量机的奢侈品识别方法。此方法以带有防伪的Gucci包的黑色标签图像为例。首先,收集真假样本照片,对照片进行分组和标记,制作正负样本,并执行规范化处理,然后提取真假标签HOG特征,然后将SVM训练为真假标签图像分类器。 ,通过对200个测试样本进行测试,实验结果表明,该方法对真假标签图像分类的准确率达到90.25%,可以很好地识别不同光照条件下的真假标签。

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