Fast Contour-Tracing Algorithm Based on a Pixel-Following Method for Image Sensors

Contour pixels distinguish objects from the background. Tracing and extracting contour pixels are widely used for smart/wearable image sensor devices, because these are simple and useful for detecting objects. In this paper, we present a novel contour-tracing algorithm for fast and accurate contour...

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Published inSensors (Basel, Switzerland) Vol. 16; no. 3; p. 353
Main Authors Seo, Jonghoon, Chae, Seungho, Shim, Jinwook, Kim, Dongchul, Cheong, Cheolho, Han, Tack-Don
Format Journal Article
LanguageEnglish
Published Switzerland MDPI 09.03.2016
MDPI AG
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Summary:Contour pixels distinguish objects from the background. Tracing and extracting contour pixels are widely used for smart/wearable image sensor devices, because these are simple and useful for detecting objects. In this paper, we present a novel contour-tracing algorithm for fast and accurate contour following. The proposed algorithm classifies the type of contour pixel, based on its local pattern. Then, it traces the next contour using the previous pixel's type. Therefore, it can classify the type of contour pixels as a straight line, inner corner, outer corner and inner-outer corner, and it can extract pixels of a specific contour type. Moreover, it can trace contour pixels rapidly because it can determine the local minimal path using the contour case. In addition, the proposed algorithm is capable of the compressing data of contour pixels using the representative points and inner-outer corner points, and it can accurately restore the contour image from the data. To compare the performance of the proposed algorithm to that of conventional techniques, we measure their processing time and accuracy. In the experimental results, the proposed algorithm shows better performance compared to the others. Furthermore, it can provide the compressed data of contour pixels and restore them accurately, including the inner-outer corner, which cannot be restored using conventional algorithms.
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ISSN:1424-8220
1424-8220
DOI:10.3390/s16030353