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arxiv: 1504.06133 · v1 · pith:U5CLDSNUnew · submitted 2015-04-23 · 💻 cs.CV

Sparse Radial Sampling LBP for Writer Identification

classification 💻 cs.CV
keywords localbinaryclassificationextractionidentificationpatternsproposedradial
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In this paper we present the use of Sparse Radial Sampling Local Binary Patterns, a variant of Local Binary Patterns (LBP) for text-as-texture classification. By adapting and extending the standard LBP operator to the particularities of text we get a generic text-as-texture classification scheme and apply it to writer identification. In experiments on CVL and ICDAR 2013 datasets, the proposed feature-set demonstrates State-Of-the-Art (SOA) performance. Among the SOA, the proposed method is the only one that is based on dense extraction of a single local feature descriptor. This makes it fast and applicable at the earliest stages in a DIA pipeline without the need for segmentation, binarization, or extraction of multiple features.

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