Cloud-Based Recognition Technology for Building Crack

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Problem of identifying building crack is studied to provide technical support for the construction quality. In the building, building crackis an important factor affecting the construction quality. This paper presents a building crack recognition method based on cloud computing. Cloud model is established to pretreat the acquired building image, so as to improve image quality, and perform construction cracks identificationaccording to the processed image. Experimental results show that the improved algorithm for cracks construction identification can improve the recognition accuracy.

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4178-4181

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September 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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