Title :
Genetic algorithm optimization of a convolutional neural network for autonomous crack detection
Author :
Oullette, R. ; Browne, Matthew ; Hirasawa, Kotaro
Author_Institution :
Open Thoughts Res., Waseda Univ. & GMD-JRL, Kitakyushu, Japan
Abstract :
Detecting cracks is an important function in building, tunnel and bridge structural analysis. Successful automation of crack detection can provide a uniform and timely means for preventing further damage to structures. This laboratory has successfully applied convolutional neural networks (CNNs) to online crack detection. CNNs represent an interesting method for adaptive image processing and form a link between artificial neural networks, and finite impulse response filters. As with most artificial neural networks, the CNN is susceptible to multiple local minima, thus complexity and time must be applied in order to avoid becoming trapped within the local minima. This paper employs a standard genetic algorithm (GA) to train the weights of a 4-5x5 filter CNN in order to pass through the local minima. This technique resulted in a 92.3±1.4% average success rate using 25 GA-trained CNNs presented with 100 crack (320x240 pixel) images.
Keywords :
computational complexity; crack detection; genetic algorithms; neural nets; structural engineering computing; GA-trained CNN; adaptive image processing; artificial neural networks; autonomous crack detection; bridge structural analysis; building structural analysis; convolutional neural network; genetic algorithm optimization; online crack detection; tunnel structural analysis; Artificial neural networks; Automation; Bridges; Buildings; Cellular neural networks; Finite impulse response filter; Genetic algorithms; Image processing; Laboratories; Neural networks;
Conference_Titel :
Evolutionary Computation, 2004. CEC2004. Congress on
Print_ISBN :
0-7803-8515-2
DOI :
10.1109/CEC.2004.1330900