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2014 | OriginalPaper | Buchkapitel

Font Distribution Observation by Network-Based Analysis

verfasst von : Chihiro Nakamoto, Rong Huang, Sota Koizumi, Ryosuke Ishida, Yaokai Feng, Seiichi Uchida

Erschienen in: Camera-Based Document Analysis and Recognition

Verlag: Springer International Publishing

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Abstract

The off-the-shelf Optical Character Recognition (OCR) engines return mediocre performance on the decorative characters which usually appear in natural scenes such as signboards. A reasonable way towards the so-called camera-based OCR is to collect a large-scale font set and analyze the distribution of font samples for realizing some character recognition engine which is tolerant to font shape variations. This paper is concerned with the issue of font distribution analysis by network. Minimum Spanning Tree (MST) is employed to construct font network with respect to Chamfer distance. After clustering, some centrality criterion, namely closeness centrality, eccentricity centrality or betweenness centrality, is introduced for extracting typical font samples. The network structure allows us to observe the font shape transition between any two samples, which is useful to create new fonts and recognize unseen decorative characters. Moreover, unlike the Principal Component Analysis (PCA), the font network fulfills distribution visualization through measuring the dissimilarity between samples rather than the lossy processing of dimensionality reduction. Compared with K-means algorithm, network-based clustering has the ability to preserve small size font clusters which generally consist of samples taking special appearances. Experiments demonstrate that the proposed network-based analysis is an effective way to grasp font distribution, and thus provides helpful information for decorative character recognition.

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Metadaten
Titel
Font Distribution Observation by Network-Based Analysis
verfasst von
Chihiro Nakamoto
Rong Huang
Sota Koizumi
Ryosuke Ishida
Yaokai Feng
Seiichi Uchida
Copyright-Jahr
2014
DOI
https://doi.org/10.1007/978-3-319-05167-3_7