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Convolutional neural networks for relevance feedback in content based image retrieval A Content based image retrieval system that exploits convolutional neural networks both for feature extraction and for relevance feedback

机译:基于内容的图像检索的相关反馈的卷积神经网络基于内容的图像检索系统,用于利用特征提取和相关性反馈的卷积神经网络

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Given the great success of Convolutional Neural Network (CNN) for image representation and classification tasks, we argue that Content-Based Image Retrieval (CBIR) systems could also leverage on CNN capabilities, mainly when Relevance Feedback (RF) mechanisms are employed. On the one hand, to improve the performances of CBIRs, that are strictly related to the effectiveness of the descriptors used to represent an image, as they aim at providing the user with images similar to an initial query image. On the other hand, to reduce the semantic gap between the similarity perceived by the user and the similarity computed by the machine, by exploiting an RF mechanism where the user labels the returned images as being relevant or not concerning her interests. Consequently, in this work, we propose a CBIR system based on transfer learning from a CNN trained on a vast image database, thus exploiting the generic image representation that it has already learned. Then, the pre-trained CNN is also fine-tuned exploiting the RF supplied by the user to reduce the semantic gap. In particular, after the user's feedback, we propose to tune and then re-train the CNN according to the labelled set of relevant and non-relevant images. Then, we suggest different strategies to exploit the updated CNN for returning a novel set of images that are expected to be relevant to the user's needs. Experimental results on different data sets show the effectiveness of the proposed mechanisms in improving the representation power of the CNN with respect to the user concept of image similarity. Moreover, the pros and cons of the different approaches can be clearly pointed out, thus providing clear guidelines for the implementation in production environments.
机译:鉴于卷积神经网络(CNN)的巨大成功进行图像表示和分类任务,我们认为基于内容的图像检索(CBIR)系统也可以利用CNN能力,主要是当采用相关反馈(RF)机制时。一方面,为了改善CBIR的性能,这与用于代表图像的描述传符的有效性严格相关,因为它们的目的是向用户提供类似于初始查询图像的图像。另一方面,通过利用用户将返回的图像标记为相关或不相关的RF机制,减少用户所感知的相似性和由机器计算的相似性之间的语义差距。因此,在这项工作中,我们提出了一种基于转移学习的CBIR系统,从大型图像数据库训练的CNN,从而利用它已经学习的通用图像表示。然后,预先训练的CNN也是微调利用用户提供的RF以减少语义间隙的微调。特别是,在用户的反馈之后,我们建议调整并根据标记的相关和非相关图像集重新列车。然后,我们建议使用不同的策略来利用更新的CNN,以返回预期与用户需求相关的新型图像集。不同数据集的实验结果表明了所提出的机制在提高CNN的相似性概念上提高CNN的表示力的有效性。此外,可以清楚地指出不同方法的优缺点,从而为生产环境中的实施提供了明确的指导。

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