Framework for Fine-grained Recognition of Retail Products from a Single Exemplar

Ryosuke Sakai, Tomokazu Kaneko, Soma Shiraishi
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Abstract

We propose a framework which allows one-shot fine-grained recognition of retail products in a real store from clean images used in e-commerce websites. We apply a metric learning approach to train the one-shot recognition model. To learn a suitable metric space for classification, we construct a data collection system which efficiently captures a large variety of products from various viewpoints under controllable lighting conditions. This dataset plays a role of an intermediate domain between the clean images and real stores. To expand applicable area of the intermediate domain, we use a domain generalization technique. In addition, we propose the pseudo class generation and metric learning method to enhance fine-grained recognition for retail products such as classification for products with multiple flavors. We demonstrate the effectiveness of each part of technique in our experiments for our target task, and show that our framework leads to high-accuracy recognition.
基于单一样本的零售产品细粒度识别框架
我们提出了一个框架,该框架允许从电子商务网站使用的干净图像中一次性细粒度识别真实商店中的零售产品。我们采用度量学习方法来训练单次识别模型。为了学习合适的度量空间进行分类,我们构建了一个数据收集系统,该系统在可控光照条件下从不同角度高效捕获大量产品。该数据集在干净图像和真实存储之间起着中间域的作用。为了扩大中间域的适用范围,我们采用了领域泛化技术。此外,我们提出了伪类生成和度量学习方法来增强对零售产品的细粒度识别,例如对多种口味的产品进行分类。我们在目标任务的实验中验证了技术各部分的有效性,并表明我们的框架可以实现高精度的识别。
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