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Human Action Performance Using Deep Neuro-Fuzzy Recurrent Attention Model - 2020


Human Action Performance Using Deep Neuro-Fuzzy Recurrent Attention Model | S-Logix

Research Area:  Machine Learning

Abstract:

A great number of computer vision publications have focused on distinguishing between human action recognition and classification rather than the intensity of actions performed. Indexing the intensity which determines the performance of human actions is a challenging task due to the uncertainty and information deficiency that exists in the video inputs. To remedy this uncertainty, in this paper we coupled fuzzy logic rules with the neural-based action recognition model to rate the intensity of a human action as intense or mild. In our approach, we used a Spatio-Temporal LSTM to generate the weights of the fuzzy-logic model, and then demonstrate through experiments that indexing of the action intensity is possible. We analyzed the integrated model by applying it to videos of human actions with different action intensities and were able to achieve an accuracy of 89.16% on our intensity indexing generated dataset. The integrated model demonstrates the ability of a neuro-fuzzy inference module to effectively estimate the intensity index of human actions.

Keywords:  
computer vision
indexing. intensity
video input
human action
neuro-fuzzy inference

Author(s) Name:  Nihar Bendre, Nima Ebadi, John J. Prevost, Peyman Najafirad

Journal name:  IEEE Access

Conferrence name:  

Publisher name:  IEEE

DOI:  https://doi.org/10.1109/ACCESS.2020.2982364

Volume Information:  Volume 8