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ICIAR
2005
Springer

Text-Pose Estimation in 3D Using Edge-Direction Distributions

13 years 10 months ago
Text-Pose Estimation in 3D Using Edge-Direction Distributions
Abstract. This paper presents a method for estimating the orientation of planar text surfaces using the edge-direction distribution (EDD) extracted from the image as input to a neural network. We consider canonical rotations and we developed a mathematical model to analyze how the EDD changes with the rotation angle under orthographic projection. In order to improve performance and solve quadrant ambiguities, we adopt an active-vision approach by considering a pair of images (instead of only one) with a slight rotation difference between them. We then use the difference between the two EDDs as input to the network. Starting with camera-captured front-parallel images with text, we apply single-axis synthetic rotations to verify the validity of the EDD transform model and to train and test the network. The presented text-pose estimation method is intended to provide navigation guidance to a mobile robot capable of reading the textual content encountered in its environment.
Marius Bulacu, Lambert Schomaker
Added 27 Jun 2010
Updated 27 Jun 2010
Type Conference
Year 2005
Where ICIAR
Authors Marius Bulacu, Lambert Schomaker
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