Texture CNN for Thermoelectric Metal Pipe Image Classification

28 May 2019Daniel VriesmanAlessandro ZimmerAlceu S. Britto Jr.Alessandro L. Koerich

In this paper, the concept of representation learning based on deep neural networks is applied as an alternative to the use of handcrafted features in a method for automatic visual inspection of corroded thermoelectric metallic pipes. A texture convolutional neural network (TCNN) replaces handcrafted features based on Local Phase Quantization (LPQ) and Haralick descriptors (HD) with the advantage of learning an appropriate textural representation and the decision boundaries into a single optimization process... (read more)

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