Training CNN Classifiers Solely on Webly Data

IF 3.3 3区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Journal of Artificial Intelligence and Soft Computing Research Pub Date : 2022-11-28 DOI:10.2478/jaiscr-2023-0005
D. Lewy, J. Mańdziuk
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引用次数: 1

Abstract

Abstract Real life applications of deep learning (DL) are often limited by the lack of expert labeled data required to effectively train DL models. Creation of such data usually requires substantial amount of time for manual categorization, which is costly and is considered to be one of the major impediments in development of DL methods in many areas. This work proposes a classification approach which completely removes the need for costly expert labeled data and utilizes noisy web data created by the users who are not subject matter experts. The experiments are performed with two well-known Convolutional Neural Network (CNN) architectures: VGG16 and ResNet50 trained on three randomly collected Instagram-based sets of images from three distinct domains: metropolitan cities, popular food and common objects - the last two sets were compiled by the authors and made freely available to the research community. The dataset containing common objects is a webly counterpart of PascalVOC2007 set. It is demonstrated that despite significant amount of label noise in the training data, application of proposed approach paired with standard training CNN protocol leads to high classification accuracy on representative data in all three above-mentioned domains. Additionally, two straightforward procedures of automatic cleaning of the data, before its use in the training process, are proposed. Apparently, data cleaning does not lead to improvement of results which suggests that the presence of noise in webly data is actually helpful in learning meaningful and robust class representations. Manual inspection of a subset of web-based test data shows that labels assigned to many images are ambiguous even for humans. It is our conclusion that for the datasets and CNN architectures used in this paper, in case of training with webly data, a major factor contributing to the final classification accuracy is representativeness of test data rather than application of data cleaning procedures.
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仅在Webly数据上训练CNN分类器
深度学习(DL)在现实生活中的应用往往受到缺乏有效训练DL模型所需的专家标记数据的限制。创建这样的数据通常需要大量的时间进行手动分类,这是昂贵的,并且被认为是在许多领域开发DL方法的主要障碍之一。这项工作提出了一种分类方法,该方法完全消除了对昂贵的专家标记数据的需要,并利用了由非主题专家的用户创建的噪声网络数据。实验是用两个著名的卷积神经网络(CNN)架构进行的:VGG16和ResNet50,在三个随机收集的基于instagram的图像集上进行训练,这些图像集来自三个不同的领域:大都市、受欢迎的食物和普通物体——最后两组由作者编译并免费提供给研究社区。包含公共对象的数据集是PascalVOC2007集的网络对应物。结果表明,尽管训练数据中存在大量的标签噪声,但将本文提出的方法与标准训练CNN协议相结合,可以在上述三个领域的代表性数据上获得较高的分类精度。此外,还提出了在训练过程中使用数据之前对数据进行自动清洗的两个简单步骤。显然,数据清洗不会导致结果的改善,这表明网络数据中噪声的存在实际上有助于学习有意义和鲁棒的类表示。人工检查基于web的测试数据子集表明,即使对人类来说,分配给许多图像的标签也是模糊的。我们的结论是,对于本文使用的数据集和CNN架构,在使用webly数据进行训练的情况下,影响最终分类准确率的主要因素是测试数据的代表性,而不是数据清洗程序的应用。
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来源期刊
Journal of Artificial Intelligence and Soft Computing Research
Journal of Artificial Intelligence and Soft Computing Research COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-
CiteScore
7.00
自引率
25.00%
发文量
10
审稿时长
24 weeks
期刊介绍: Journal of Artificial Intelligence and Soft Computing Research (available also at Sciendo (De Gruyter)) is a dynamically developing international journal focused on the latest scientific results and methods constituting traditional artificial intelligence methods and soft computing techniques. Our goal is to bring together scientists representing both approaches and various research communities.
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