The Research on Crack Recognition of Ancient Building Painting Based on Curve Analysis

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In this paper, a novel crack detection method is proposed based on the digital image of ancient building painting. The paper first does painting image preprocessing, such as image edge detection, image binary of adaptive threshold and removal of isolated points, and then establishes discrimination model to distinguish between regions and lines, finally uses curve fitting way to sort out the cracks in building painting. The experimental results are satisfactory.

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1174-1178

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September 2013

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© 2013 Trans Tech Publications Ltd. All Rights Reserved

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