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dc.date.accessioned2026-07-02T09:11:37Z
dc.date.available2026-07-02T09:11:37Z
dc.description.abstractWithin the domain of historical document image analysis, the process of identifying the spatial structure of a document image is an essential step in many document processing tasks, such as optical character recognition and information extraction. Advancements in layout analysis promise to enhance efficiency and accuracy using specialized models tailored to distinct layouts. We introduce NetLay, a new dataset for benchmarking layout classification algorithms for historical works. It consists of over 1,300 images of pages of printed Hebrew (or Hebrew‑character) books in a variety of styles, categorized into four different classes based on their layout (the number of text columns and regions). Ground truth was crafted manually at the page level. Furthermore, we conduct an in‑depth performance evaluation of various layout classification algorithms, which are based on deep‑learning models that learn to extract spatial features from images. We evaluate our algorithms on NetLay and achieve state‑of‑the‑art results on the task of layout classification for historical books.it_IT
dc.language.isoenit_IT
dc.rightsCC BYit_IT
dc.relation.ispartofjournalMagazénit_IT
dc.identifier.citationSharva Gogawale, Luigi Bambaci, Berat Kurar-Barakat, Daria Vasyutinsky Shapira, Daniel Stökl Ben Ezra, Nachum Dershowitz, NetLay: Layout Classification Dataset for Enhancing Layout Analysis, «Magazén», 5, 2024, n. 2, pp. 223-240it_IT
dc.titleNetLay: Layout Classification Dataset for Enhancing Layout Analysisit_IT
dc.sourceUniSa. Sistema Bibliotecario di Ateneoit_IT
dc.contributor.authorGogawale, Sharva <Tel Aviv University>
dc.contributor.authorBambaci, Luigi <École Pratique des Hautes Études (EPHE)>
dc.contributor.authorKurar-Barakat, Berat <Tel Aviv University>
dc.contributor.authorVasyutinsky Shapira, Daria <Tel Aviv University>
dc.contributor.authorStökl Ben Ezra, Daniel <École Pratique des Hautes Études (EPHE)>
dc.contributor.authorDershowitz, Nachum <Tel Aviv University>
dc.date.issued2024
dc.identifier.urihttps://edizionicafoscari.it/it/edizioni4/riviste/magazen/2024/2/netlay-layout-classification-dataset-for-enhancing/it_IT
dc.identifier.urihttp://elea.unisa.it/xmlui/handle/10556/9544
dc.typeJournal Articleit_IT
dc.format.extentP. 223-240it_IT
dc.identifier.doihttp://doi.org/10.30687/mag/2724-3923/2024/02/003it_IT
dc.identifier.issn2724-3923it_IT
dc.subjectLayout analysisit_IT
dc.subjectLayout classificationit_IT
dc.subjectMulti‑label classificationit_IT
dc.subjectHistorical document analysisit_IT
dc.subjectConvolutional neural networksit_IT
dc.subjectDeep learningit_IT
dc.publisher.alternativeS. Gogawale, L. Bambaci, B. Kurar-Barakat, D. Vasyutinsky Shapira, D. Stökl Ben Ezra, N. Dershowitz, NetLay: Layout Classification Dataset for Enhancing Layout Analysis, «Magazén», 5, 2024, n. 2, pp. 223-240it_IT
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