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Journal ArticleDOI

Towards unsupervised physical activity recognition using smartphone accelerometers

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TLDR
This work employs an unsupervised method for recognizing physical activities using smartphone accelerometers, extracted from the raw acceleration data collected by smartphones, and finds the method outperforms other existing methods.
Abstract
The development of smartphones equipped with accelerometers gives a promising way for researchers to accurately recognize an individual's physical activity in order to better understand the relationship between physical activity and health. However, a huge challenge for such sensor-based activity recognition task is the collection of annotated or labelled training data. In this work, we employ an unsupervised method for recognizing physical activities using smartphone accelerometers. Features are extracted from the raw acceleration data collected by smartphones, then an unsupervised classification method called MCODE is used for activity recognition. We evaluate the effectiveness of our method on three real-world datasets, i.e., a public dataset of daily living activities and two datasets of sports activities of race walking and basketball playing collected by ourselves, and we find our method outperforms other existing methods. The results show that our method is viable to recognize physical activities using smartphone accelerometers.

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Citations
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Journal ArticleDOI

Deep learning algorithms for human activity recognition using mobile and wearable sensor networks: State of the art and research challenges

TL;DR: The focus of this review is to provide in-depth summaries of deep learning methods for mobile and wearable sensor-based human activity recognition, and categorise the studies into generative, discriminative and hybrid methods.
Journal ArticleDOI

A Deep Learning Approach to on-Node Sensor Data Analytics for Mobile or Wearable Devices

TL;DR: A deep learning methodology is proposed, which combines features learned from inertial sensor data together with complementary information from a set of shallow features to enable accurate and real-time activity classification and is evaluated against state-of-the-art methods.
Posted Content

Action2Activity: Recognizing Complex Activities from Sensor Data

TL;DR: In this article, a novel approach for complex activity recognition comprising of two components is presented, which provides a mid-level feature representation for activities, encodes temporal relatedness among actions, and captures the intrinsic properties of activities.
Journal ArticleDOI

A novel CNN based security guaranteed image watermarking generation scenario for smart city applications

TL;DR: A novel algorithm using synergetic neural networks for robustness and security of digital image watermarking is proposed, which obtains an optimal Peak Signal-to-noise ratio (PSNR) and can complete certain image processing operations with improved performance.
Proceedings ArticleDOI

Deep learning for human activity recognition: A resource efficient implementation on low-power devices

TL;DR: A human activity recognition technique based on a deep learning methodology is designed to enable accurate and real-time classification for low-power wearable devices to obtain invariance against changes in sensor orientation, sensor placement, and in sensor acquisition rates.
References
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Proceedings ArticleDOI

k-means++: the advantages of careful seeding

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Journal ArticleDOI

An automated method for finding molecular complexes in large protein interaction networks.

TL;DR: A novel graph theoretic clustering algorithm, "Molecular Complex Detection" (MCODE), that detects densely connected regions in large protein-protein interaction networks that may represent molecular complexes is described.
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