Object Recognition Method for Industrial Intelligent Robot
Kye Kyung Kim, Sang Seung Kang, Joong Bae Kim, Jae Yeon Lee, Hyun Min, Tae-Yong Choi, Jin Ho Kyung
- Year
- 2013
- Citations
- 7
Abstract
The introduction of industrial intelligent robot using vision sensor has been interested in automated factory. 2D and 3D vision sensors have used to recognize object and to estimate object pose, which is for packaging parts onto a complete whole. But it is not trivial task due to illumination and various types of objects. Object image has distorted due to illumination that has caused low reliability in recognition. In this paper, recognition method of complex shape object has been proposed. An accurate object region has detected from combined binary image, which has achieved using DoG filter and local adaptive binarization. The object has recognized using neural network, which is trained with sub-divided object class according to object type and rotation angle. Predefined shape model of object and maximal slope have used to estimate the pose of object. The performance has evaluated on ETRI database and recognition rate of 96% has obtained.
Keywords
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