Abstract

Human behavior modeling in smart environments is a growing research area treating several challenges related to ubiquitous computing, pattern recognition, and ambient assisted living. Thanks to recent progress in sensing devices, it is now possible to design computational models able of accurate detection of residents’ activities and daily routines. For this goal, we introduce in this paper a deep learning-based framework for activity recognition in smart homes. This framework proposes a detailed methodology for data preprocessing, feature mining, and deep learning techniques application. The novel framework was designed to ensure a deep exploration of the feature space since three main approaches are tested, namely, the all-features approach, the selection approach, and the reduction approach. Besides, the framework proposes the evaluation and the comparison of several well-chosen deep learning techniques such as autoencoder, recurrent neural networks (RNN), and some of their derivatives models. Concretely, the framework was applied on the “Orange4Home” dataset which represents a recent dataset specially designed for smart homes research. Our main findings show that the best approach for efficient classification is the selection approach. Furthermore, our overall results outperformed baseline models based on random forest classifiers and the principal component analysis technique, especially the results of our RNN-based model for the all-features approach and the results of our autoencoder-based model for the feature reduction approach.

Highlights

  • Analyzing human routines in ambient and smart environments represents a growing research area due to its multiple scientific, engineering, and data-privacy challenges [1].Smart homes are a typical example of these intelligent environments

  • The same selection technique was coupled with our framework classifiers (MLP, recurrent neural networks (RNN), Long Short-Term Memory (LSTM), and GRU)

  • While a slight accuracy amelioration was recorded for the neural network models, the F-measure scores were very close for all models

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Summary

A Deep Learning-Based Framework for Human Activity

Thanks to recent progress in sensing devices, it is possible to design computational models able of accurate detection of residents’ activities and daily routines. For this goal, we introduce in this paper a deep learning-based framework for activity recognition in smart homes. We introduce in this paper a deep learning-based framework for activity recognition in smart homes This framework proposes a detailed methodology for data preprocessing, feature mining, and deep learning techniques application. The novel framework was designed to ensure a deep exploration of the feature space since three main approaches are tested, namely, the all-features approach, the selection approach, and the reduction approach.

Introduction
Related Work
Deep Learning Models
Proposed Framework
Which Features to Use?
Experiments
Dropout node
Results and Discussion
Conclusion
Full Text
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