知识图像分类数据集

IF 1 Q3 MULTIDISCIPLINARY SCIENCES
Franck Anaël Mbiaya , Christel Vrain , Frédéric Ros , Thi-Bich-Hanh Dao , Yves Lucas
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引用次数: 0

摘要

应用于原始数据的深度学习已显示出出色的图像分类性能,主要是在有大量数据可用的情况下。然而,当大量数据不可用时,性能就会明显下降。此外,当区分不同类别(如细粒度图像分类)具有挑战性时,深度架构也很难达到令人满意的性能水平。在要求苛刻的情况下,利用先验知识和原始数据可以增强图像分类能力。然而,目前利用先验知识给出的图像分类数据集数量有限,从而限制了这一领域的研究工作。本文针对分类问题引入了集成先验知识的创新数据集。这些数据集由现有数据构建而成,通常用于多标签多类分类或物体检测。频繁封闭项集挖掘用于创建类别及其相应的属性(如图像中是否存在物体),然后通过这些属性的规则提取先验知识。本文介绍了生成规则的算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dataset for image classification with knowledge

Deep learning applied to raw data has demonstrated outstanding image classification performance, mainly when abundant data is available. However, performance significantly degrades when a substantial volume of data is unavailable. Furthermore, deep architectures struggle to achieve satisfactory performance levels when distinguishing between distinct classes, such as fine-grained image classification, is challenging. Utilizing a priori knowledge alongside raw data can enhance image classification in demanding scenarios. Nevertheless, only a limited number of image classification datasets given with a priori knowledge are currently available, thereby restricting research efforts in this field. This paper introduces innovative datasets for the classification problem that integrate a priori knowledge. These datasets are built from existing data typically employed for multilabel multiclass classification or object detection. Frequent closed itemset mining is used to create classes and their corresponding attributes (e.g. the presence of an object in an image) and then to extract a priori knowledge expressed by rules on these attributes. The algorithm for generating rules is described.

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来源期刊
Data in Brief
Data in Brief MULTIDISCIPLINARY SCIENCES-
CiteScore
3.10
自引率
0.00%
发文量
996
审稿时长
70 days
期刊介绍: Data in Brief provides a way for researchers to easily share and reuse each other''s datasets by publishing data articles that: -Thoroughly describe your data, facilitating reproducibility. -Make your data, which is often buried in supplementary material, easier to find. -Increase traffic towards associated research articles and data, leading to more citations. -Open up doors for new collaborations. Because you never know what data will be useful to someone else, Data in Brief welcomes submissions that describe data from all research areas.
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