Unsupervised Deep Learning-based clustering for Human Activity
Recognition
- URL: http://arxiv.org/abs/2211.05483v1
- Date: Thu, 10 Nov 2022 10:56:47 GMT
- Title: Unsupervised Deep Learning-based clustering for Human Activity
Recognition
- Authors: Hamza Amrani, Daniela Micucci, Paolo Napoletano
- Abstract summary: The paper proposes DISC (Deep Inertial Sensory Clustering), a DL-based clustering architecture that automatically labels multi-dimensional inertial signals.
The architecture combines a recurrent AutoEncoder and a clustering criterion to predict unlabelled human activities-related signals.
The experiments demonstrate the effectiveness of DISC on both clustering accuracy and normalized mutual information metrics.
- Score: 8.716606664673982
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: One of the main problems in applying deep learning techniques to recognize
activities of daily living (ADLs) based on inertial sensors is the lack of
appropriately large labelled datasets to train deep learning-based models. A
large amount of data would be available due to the wide spread of mobile
devices equipped with inertial sensors that can collect data to recognize human
activities. Unfortunately, this data is not labelled. The paper proposes DISC
(Deep Inertial Sensory Clustering), a DL-based clustering architecture that
automatically labels multi-dimensional inertial signals. In particular, the
architecture combines a recurrent AutoEncoder and a clustering criterion to
predict unlabelled human activities-related signals. The proposed architecture
is evaluated on three publicly available HAR datasets and compared with four
well-known end-to-end deep clustering approaches. The experiments demonstrate
the effectiveness of DISC on both clustering accuracy and normalized mutual
information metrics.
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