Real time text localization for Indoor Mobile Robot Navigation
Kazem Qazanfari, Saeed Shiri

TL;DR
This paper presents a fast, real-time text localization method for indoor mobile robot navigation, utilizing morphological operators and machine learning to accurately detect text landmarks in complex scenes.
Contribution
A novel two-step text localization approach combining morphological operators and SVM classification for real-time indoor robot navigation.
Findings
High detection accuracy compared to existing methods
Fast processing suitable for real-time applications
Effective in complex indoor environments
Abstract
Scene text is an important feature to be extracted, especially in vision-based mobile robot navigation as many potential landmarks such as nameplates and information signs contain text. In this paper, a novel two-step text localization method for Indoor Mobile Robot Navigation is introduced. This method is based on morphological operators and machine learning techniques and can be used in real time environments. The proposed method has two steps. At First, a new set of morphological operators is applied with a particular sequence to extract high contrast areas that have high probability of text existence. Using of morphological operators has many advantages such as: high computation speed, being invariant to several geometrical transformations like translation, rotations, and scaling, and being able to extract all areas containing text. After extracting text candidate regions, a set of…
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Taxonomy
TopicsAdvanced Image and Video Retrieval Techniques · Handwritten Text Recognition Techniques · Image Retrieval and Classification Techniques
