In this paper we present a method for text recognition in floor plan images. In particular, we are concerned about locating, reading, and categorizing text inside floor plan images to obtain information about the building. Furthermore, the aim of this paper is to compare traditional text detection methods, based on image processing techniques, with recent approaches relying on convolutional neural networks. To improve results we combined several methods outperforming the original ones. Text regions are also classified in four semantic classes according to their purpose. Two datasets with different features, including quality and size, were considered in the experiments performed

Text Recognition and Classification in Floor Plan Images / Jason Ravagli, Zahra Ziran, Simone Marinai. - ELETTRONICO. - (2019), pp. 1-6. (Intervento presentato al convegno 13th IAPR International Workshop on Graphics Recognition).

Text Recognition and Classification in Floor Plan Images

Zahra Ziran;Simone Marinai
2019

Abstract

In this paper we present a method for text recognition in floor plan images. In particular, we are concerned about locating, reading, and categorizing text inside floor plan images to obtain information about the building. Furthermore, the aim of this paper is to compare traditional text detection methods, based on image processing techniques, with recent approaches relying on convolutional neural networks. To improve results we combined several methods outperforming the original ones. Text regions are also classified in four semantic classes according to their purpose. Two datasets with different features, including quality and size, were considered in the experiments performed
2019
Proc. 15th IAPR International Conference on Document Analysis and Recognition Workshops (ICDARW 2019)
13th IAPR International Workshop on Graphics Recognition
Jason Ravagli, Zahra Ziran, Simone Marinai
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Utilizza questo identificatore per citare o creare un link a questa risorsa: https://hdl.handle.net/2158/1172734
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