This paper presents an overview of some convolutional neural networks architectures and methods for solving the facial expression recognition task using the FER_2013 image dataset. In this sense, three different convolutional networks have been trained and analyzed: a simple sequential architecture, a very lightweight network inspired from the XCEPTION architecture, and the well-known ResNet50 model. Following the experiments conducted using the above-mentioned architectures we have managed to obtain a state-of-the art comparable, 71.25% prediction accuracy on the test subset of FER-2013.
Sonu SumanShaik Mohammad AbdullahShaik AmmanT. V. PoonamMallikarjun M. Kodbagi
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