This article presents a system focused on the detection of three types of abnormal walk patterns caused by neurological diseases, specifically Parkinsonian gait, Hemiplegic gait, and Spastic Diplegic gait. A Kinect sensor is used to extract the Skeleton from a person during its walk, to then calculate four types of bases that generate different sequences from the 25 points of articulations that the Skeleton gives. For each type of calculated base, a recurrent neural network (RNN) is trained, specifically a Long short-term memory (LSTM). In addition, there is a graphical user interface that allows the acquisition, training, and testing of trained networks. Of the four trained networks, 98.1% accuracy is obtained with the database that was calculated with the distance of each point provided by the Skeleton to the Hip-Center point.
CITATION STYLE
Pachón-Suescún, C. G., Pinzón-Arenas, J. O., & Jiménez-Moreno, R. (2020). Abnormal gait detection by means of LSTM. International Journal of Electrical and Computer Engineering, 10(2), 1495–1506. https://doi.org/10.11591/ijece.v10i2.pp1495-1506
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