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Toward New Retail: A Benchmark Dataset for Smart Unmanned Vending Machines

机译:走向新零售:智能无人自动售货机的基准数据集

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摘要

Deep learning is a popular direction in computer vision and digital image processing. It is widely utilized in many fields, such as robot navigation, intelligent video surveillance, industrial inspection, and aerospace. With the extensive use of deep learning techniques, classification and object detection algorithms have been rapidly developed. In recent years, with the introduction of the concept of "unmanned retail," object detection, and image classification play a central role in unmanned retail applications. However, open-source datasets of traditional classification and object detection have not yet been optimized for application scenarios of unmanned retail. Currently, classification and object detection datasets do not exist that focus on unmanned retail solely. Therefore, in order to promote unmanned retail applications by using deep learning-based classification and object detection, in this article we collected more than 30 000 images of unmanned retail containers using a refrigerator affixed with different cameras under both static and dynamic recognition environments. These images were categorized into ten kinds of beverages. After manual labeling, images in our constructed dataset contained 155 153 instances, each of which was annotated with a bounding box. We performed extensive experiments on this dataset using ten state-of-the-art deep learning-based models. Experimental results indicate great potential of using these deep learning-based models for real-world smart unmanned vending machines.
机译:深度学习是计算机视觉和数字图像处理中的流行方向。它广泛利用在许多领域,例如机器人导航,智能视频监控,工业检验和航空航天。随着深度学习技术的广泛使用,分类和对象检测算法已经迅速发展。近年来,随着“无人零售,”对象检测的概念,图像分类在无人零售应用中起着核心作用。但是,对于无人零售的应用场景,尚未优化传统分类和对象检测的开源数据集。目前,分类和对象检测数据集不存在于单独关注无人零售的数据集。因此,为了通过使用基于深度学习的分类和对象检测来促进无人零售应用,在本文中,我们在静态和动态识别环境下使用冰箱收集了超过30 000个无人零售容器图像。这些图像分为10种饮料。在手动标记后,我们构造的数据集中的图像包含155个153实例,每个实例都使用边界框注释。我们使用十个最先进的基于深度学习的模型对此数据集进行了广泛的实验。实验结果表明使用这些基于深入学习的基于智能无人自动售货机的模型的巨大潜力。

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