Automatic Sign Detection and Recognition in Natural Scenes
Abstract
Visually impaired individuals are unable to utilize the significant
amount of information in signs. VIDI is a system for detecting and
recognizing signs in the environment and voice synthesizing their
contents. The wide variety of signs and unconstrained imaging
conditions make the problem challenging. We detect signs using local
color and texture features to classify image regions with a
conditional maximum entropy model. Detected sign regions are then
recognized by matching them against a known database of signs. A
support vector machine classifier uses color to focus the search, and
a match is found based on the correspondences of corners and their
associated shape contexts. Our dataset includes images of downtown
scenes with several signs exhibiting both illumination differences and
projective distortions. A wide range of signs are detected and
recognized including those containing both text and symbolic
information. The detection and the recognition components each perform
well on their respective tasks, and initial evaluations of a complete
detection and recognition system are promising.
BiBTex Entry
@inproceedings{silapachote-sign-cvavi05,
author = {Piyanuch Silapachote and Jerod Weinman and Allen Hanson and Richard Wiess and Marwan Mattar},
title = {Automatic Sign Detection and Recognition in Natural Scenes},
booktitle = {Proceedings of the IEEE Workshop on Computer Vision Applications for the Visually Impaired},
location = {San Diego, CA},
month = {June},
year = {2005}
}