Number and Colors Recognition for the Beaded Pad

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Abstract:

The hand made beaded pad is getting more and more expensive due to the increasing labor costs and its necessary to develop the beaded pads weaving machine. One of the key problems for beaded pads weaving machine developing is the beaded pad image pattern recognitions including the beads number and colors. This paper focuses on the researches of identifying the beads number and the colors of the beaded pad image. First, the beads number of the pad image is identified by threshold and calibration methods. Then, the beads are separated from the image background and the beads colors are identified by the characteristics analysis for the RGB color space of the pad image. Finally, the verification is further provided by computer simulation and the beads pad reconstruction, and the results show that this proposed method can identify the number and the colors for the beads in pad image accurately.

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Advanced Materials Research (Volumes 694-697)

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1964-1969

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May 2013

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© 2013 Trans Tech Publications Ltd. All Rights Reserved

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