Data di Pubblicazione:
2023
Abstract:
In recent years, the number of older people living alone has increased rapidly. Innovative
vision systems to remotely assess people's mobility can help healthy, active, and happy aging. In the related
literature, the mobility assessment of older people is not yet widespread in clinical practice. In addition,
the poor availability of data typically forces the analyses to binary classification, e.g. normal/anomalous
behavior, instead of processing exhaustive medical protocols. In this paper, real videos of elderly people
performing three mobility tests of a clinical protocol are automatically categorized, emulating the complex
evaluation process of expert physiotherapists. Videos acquired using low-cost cameras are initially
processed to obtain skeletal information. A proper data augmentation technique is then used to enlarge
the dataset variability. Thus, significant features are extracted to generate a set of inputs in the form of
time series. Four deep neural network architectures with feedback connections, even aided by a preliminary
convolutional layer, are proposed to label the input features in discrete classes or to estimate a continuous
mobility score as the result of a regression task. The best results are achieved by the proposed Conv-BiLSTM
classifier, which achieves the best accuracy, ranging between 88.12% and 90%. Further comparisons with
shallow learning classifiers still prove the superiority of the deep Conv-BiLSTM classifier in assessing
people's mobility, since deep networks can evaluate the quality of test executions.
Tipologia CRIS:
01.01 Articolo in rivista
Keywords:
Deep Neural Network; Motion Ability Evaluation; Skeleton Based Approach; Video Analysis
Elenco autori:
Romeo, Laura; D'Orazio, TIZIANA RITA; Cicirelli, Grazia; Marani, Roberto
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