Kurcuma: a kitchen utensil recognition collection for unsupervised domain adaptation

被引:0
作者
Adrian Rosello
Jose J. Valero-Mas
Antonio Javier Gallego
Javier Sáez-Pérez
Jorge Calvo-Zaragoza
机构
[1] University of Alicante,Department of Software and Computing Systems
[2] Carretera San Vicente del Raspeig s/n,undefined
来源
Pattern Analysis and Applications | 2023年 / 26卷
关键词
Deep learning; Domain adaptation; Robotics; Computer vision;
D O I
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中图分类号
学科分类号
摘要
The use of deep learning makes it possible to achieve extraordinary results in all kinds of tasks related to computer vision. However, this performance is strongly related to the availability of training data and its relationship with the distribution in the eventual application scenario. This question is of vital importance in areas such as robotics, where the targeted environment data are barely available in advance. In this context, domain adaptation (DA) techniques are especially important to building models that deal with new data for which the corresponding label is not available. To promote further research in DA techniques applied to robotics, this work presents Kurcuma (Kitchen Utensil Recognition Collection for Unsupervised doMain Adaptation), an assortment of seven datasets for the classification of kitchen utensils—a task of relevance in home-assistance robotics and a suitable showcase for DA. Along with the data, we provide a broad description of the main characteristics of the dataset, as well as a baseline using the well-known domain-adversarial training of neural networks approach. The results show the challenge posed by DA on these types of tasks, pointing to the need for new approaches in future work.
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页码:1557 / 1569
页数:12
相关论文
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