提高零售产品的识别度:细粒度的瓶子尺寸分类

Katarina Tolja, M. Subašić, Z. Kalafatić, S. Lončarić
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引用次数: 0

摘要

在本文中,我们提出了两种创新的方法来解决产品尺寸分类的关键挑战,特别关注瓶子。我们的研究特别有趣,因为我们利用瓶盖作为参考对象,这使得瓶子尺寸分类能够克服捕获设备与零售货架之间的距离、视角和货架上瓶子的排列等挑战。我们展示了参考对象在显式和隐式新方法中的使用,并讨论了所提出方法的优点和局限性。
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Enhancing Retail Product Recognition: Fine-Grained Bottle Size Classification
In this paper, we propose two innovative approaches to tackle the key challenges in product size classification, with a specific focus on bottles. Our research is particularly interesting as we leverage the bottle cap as a reference object, which allows bottle size classification to overcome challenges in the distance between the capturing device and the retail shelf, viewing angle, and arrangement of bottles on the shelves. We showcase the usage of the reference object in explicit and implicit novel approaches and discuss the benefits and limitations of the proposed methods.
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