Resumo
Cellular Automata are gaining ground in many research areas such as biology, physics
and chemistry. But as more parameters are added, it becomes impossible to find
features that may be interesting for a particular application. This work has
objective by unsupervised machine learning methods like texture descriptors
and convolutional autoencoder to determine which Elementary Cellular Automaton rules belong to the
classes determined by Wolfram. To do unsupervised learning, histograms were generated
with the Local Binary Pattern Variance (LBPV) and the Convolutional Autoencoder, then using the
histograms in the K-Means model to analyze whether the model is able to separate the data into four clusters
according to the classification proposed by Woflram. In the end, it was observed that both methods did not
were able to perform such classification, and the LBPV showed the closest results.