Next Generation Computing Technologies on Computational Intelligence: 4th International Conference, NGCT 2018, Dehradun, India, November 21–22, 2018, Revised Selected Papers

In this research we have used the Brodatz dataset for redefining the texture features. We have computed the second order image statistical parameters like contrast, correlation, energy and homogeneity for defining the features. These features are texture visual features which are affected by the human visual perception. We have computed these features for the first 35 textured surfaces obtained from the Brodatz dataset and on the basis of this we have concluded that which surface have obtained maximum and minimum statistical value and its effects on the human visual perception.

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