2021
DOI: 10.48550/arxiv.2112.10324
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Product Re-identification System in Fully Automated Defect Detection

Abstract: In this work, we introduce a method and present an improved neural work to perform product re-identification, which is an essential core function of a fully automated product defect detection system. Our method is based on feature distance. It's the combination of feature extraction neural networks, such as VGG16, AlexNet, with an image search engine -Vearch. The dataset that we used to develop product re-identification systems is a water-bottle dataset that consists of 400 images of 18 types of water bottles.… Show more

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