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无监督和半监督流形学习的秩流嵌入。

Rank Flow Embedding for Unsupervised and Semi-Supervised Manifold Learning.

出版信息

IEEE Trans Image Process. 2023;32:2811-2826. doi: 10.1109/TIP.2023.3268868. Epub 2023 May 19.

Abstract

Impressive advances in acquisition and sharing technologies have made the growth of multimedia collections and their applications almost unlimited. However, the opposite is true for the availability of labeled data, which is needed for supervised training, since such data is often expensive and time-consuming to obtain. While there is a pressing need for the development of effective retrieval and classification methods, the difficulties faced by supervised approaches highlight the relevance of methods capable of operating with few or no labeled data. In this work, we propose a novel manifold learning algorithm named Rank Flow Embedding (RFE) for unsupervised and semi-supervised scenarios. The proposed method is based on ideas recently exploited by manifold learning approaches, which include hypergraphs, Cartesian products, and connected components. The algorithm computes context-sensitive embeddings, which are refined following a rank-based processing flow, while complementary contextual information is incorporated. The generated embeddings can be exploited for more effective unsupervised retrieval or semi-supervised classification based on Graph Convolutional Networks. Experimental results were conducted on 10 different collections. Various features were considered, including the ones obtained with recent Convolutional Neural Networks (CNN) and Vision Transformer (ViT) models. High effective results demonstrate the effectiveness of the proposed method on different tasks: unsupervised image retrieval, semi-supervised classification, and person Re-ID. The results demonstrate that RFE is competitive or superior to the state-of-the-art in diverse evaluated scenarios.

摘要

采集和共享技术的显著进步使得多媒体资源的增长及其应用几乎成为无限可能。然而,情况正好相反,监督训练所需的带标签数据的可用性很低,因为这类数据通常获取起来既昂贵又耗时。尽管迫切需要开发有效的检索和分类方法,但监督方法所面临的困难突显了能够在少量或没有带标签数据的情况下运行的方法的相关性。在这项工作中,我们提出了一种名为 Rank Flow Embedding (RFE) 的新颖无监督和半监督流形学习算法。所提出的方法基于流形学习方法最近利用的思想,包括超图、笛卡尔积和连通分量。该算法计算上下文敏感的嵌入,这些嵌入是根据基于排序的处理流进行细化的,同时还结合了补充的上下文信息。生成的嵌入可用于更有效的无监督检索或基于图卷积网络的半监督分类。在 10 个不同的集合上进行了实验。考虑了各种特征,包括最近的卷积神经网络 (CNN) 和 Vision Transformer (ViT) 模型获得的特征。高效的实验结果表明了该方法在不同任务上的有效性:无监督图像检索、半监督分类和行人重识别。结果表明,RFE 在各种评估场景中具有竞争力或优于现有技术。

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