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Experimental Study of Long Short-Term Memory and Transformer Models for Fall Detection on Smartwatches.

Syed Tousiful Haque1, Minakshi Debnath1, Awatif Yasmin1

  • 1Department of Computer Science, Texas State University, San Marcos, TX 78666, USA.

Sensors (Basel, Switzerland)
|October 16, 2024
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Summary
This summary is machine-generated.

Researchers compared Long Short-Term Memory (LSTM) and Transformer models for real-time fall detection on smartwatches. Transformers are preferable for real-time applications despite LSTM

Keywords:
LSTMdeep learningfall detectiontransformerswearables

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Area of Science:

  • Wearable technology
  • Artificial intelligence
  • Biomedical engineering

Background:

  • Falls are a leading cause of injury deaths globally.
  • Existing AI-powered wearable fall detection systems on smartwatches struggle with real-time accuracy, missing falls and generating false positives.
  • Previous research explored Long Short-Term Memory (LSTM) models for fall detection, showing promise in offline testing but not always translating to real-time performance.

Purpose of the Study:

  • To compare the performance of Long Short-Term Memory (LSTM) and Transformer models for real-time fall detection on smartwatches.
  • To evaluate the effectiveness of different LSTM and Transformer model variants in learning fall patterns.
  • To determine the optimal model for practical, real-time fall detection applications using commodity smartwatches.

Main Methods:

  • Investigated and experimented with three variants of LSTM and two variants of Transformer models.
  • Trained all models using fall and activity data from three distinct datasets.
  • Conducted real-time testing of the trained models using the SmartFall application on smartwatches.

Main Results:

  • In offline training, the Convolutional Neural Network-LSTM (CNN-LSTM) model demonstrated superior performance across all datasets compared to Transformer models.
  • Despite offline performance, real-time testing revealed limitations in translating LSTM model accuracy to practical application.
  • Transformer models showed potential for effective real-time fall detection due to their ability to learn long-sequence data via self-attention.

Conclusions:

  • While CNN-LSTM models excel in offline fall detection analysis, Transformer models are a more suitable choice for real-time deployment on smartwatches.
  • The self-attention mechanism in Transformer models aids in capturing complex, long-term patterns crucial for accurate real-time fall detection.
  • Further development of Transformer-based systems could significantly improve the reliability and practicality of wearable fall detection technology.