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Improved Crack Type Classification Neural Network based on Square Sub-images of Pavement Surface
Book chapter

Improved Crack Type Classification Neural Network based on Square Sub-images of Pavement Surface

Byoung Jik Lee and Hosin “David” Lee
Innovations in Computing Sciences and Software Engineering, pp.607-610
Springer Netherlands
05/20/2010
DOI: 10.1007/978-90-481-9112-3_105

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Abstract

The previous neural network based on the proximity values was developed using rectangular pavement images. However, the proximity value derived from the rectangular image was biased towards transverse cracking. By sectioning the rectangular image into a set of square sub-images, the neural network based on the proximity value became more robust and consistent in determining a crack type. This paper presents an improved neural network to determine a crack type from a pavement surface image based on square sub-images over the neural network trained using rectangular pavement images. The advantage of using square sub-image is demonstrated by using sample images of transverse cracking, longitudinal cracking and alligator cracking.
component crack type classification digital pavement image neural networks square sub-image decomposition

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