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 is 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. This is a small dataset, which was the biggest challenge of our work. However, the combination of neural networks with Vearch shows potential to tackle the product re-identification problems. Especially, our new neural network - AlphaAlexNet that a neural network was improved based on AlexNet could improve the production identification accuracy by four percent. This indicates that an ideal production identification accuracy could be achieved when efficient feature extraction methods could be introduced and redesigned for image feature extractions of nearly identical products. In order to solve the biggest challenges caused by the small size of the dataset and the difficult nature of identifying productions that have little differences from each other. In our future work, we propose a new roadmap to tackle nearly-identical production identifications: to introduce or develop new algorithms that need very few images to train themselves.
翻译:在这项工作中,我们引入了一种方法,并展示了改进的神经工作,以进行产品再识别,这是完全自动化产品缺陷检测系统的基本核心职能。我们的方法基于特征距离。这是VGG16、AlexNet等地缘提取神经网络与图像搜索引擎Vearch的结合。我们用来开发产品再识别系统的数据集是一个水瓶数据集,由18种水瓶的400个图像组成。这是一个小数据集,这是我们工作的最大挑战。然而,神经网络与Vearch的结合显示解决产品再识别问题的潜力。特别是,我们新的神经网络-AlphaAlexNet,根据AlexNet改进了神经网络,可以提高生产识别准确度4%。这表明,当可以采用高效的特征提取方法并重新设计出几乎相同的产品图像的图像提取时,可以实现理想的生产识别准确性。为了解决由于数据集规模小和辨别出每个产品都没有什么差异的困难性质造成的最大挑战。特别是我们新的神经网络-AlphaAlexNet,根据AlexNet网络改进了神经网络,可以提高生产精确度的准确度。这表示,我们未来需要制定新的路线图,以便制定新的地图。