Self-supervised clustering for codebook construction : an application to object

Arturo Ribes, Senshan Ji, Arnau Ramisa, Ramon L. De Mantaras

    Research output: Chapter in Book / Conference PaperChapter

    1 Citation (Scopus)

    Abstract

    Approaches to object localization based on codebooks do not exploit the dependencies between appearance and geometric information present in training data. This work addresses the problem of computing a codebook tailored to the task of localization by applying regularization based on geometric information. We present a novel method, the Regularized Combined Partitional-Agglomerative clustering, which extends the standard CPA method by adding extra knowledge to the clustering process to preserve as much geometric information as needed. Due to the time complexity of the methodology, we also present an implementation on the GPU using nVIDIA CUDA technology, speeding up the process with a factor over 100x.
    Original languageEnglish
    Title of host publicationArtificial Intelligence Research and Development
    EditorsCezar Fernandez, Hector Geffner, Felip Manya
    Place of PublicationNetherlands
    PublisherIOS Press
    Pages208-217
    Number of pages10
    ISBN (Electronic)9781607508427
    ISBN (Print)9781607508410
    DOIs
    Publication statusPublished - 2011

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