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Step Visualizer

A Flutter project to visualize raw sensor data and predict step counts for the left and right foot. Step predictions are generated using a combination of signal processing (Butterworth low-pass filtering and SciPy peak detection) and machine learning models.

Overview

  • Prediction Models:

    • Sequential Models (Time-Series):
      • UnifiedCountLSTM: 2-layer LSTM with dropout and ReLU.
      • SimpleLSTM: Single-layer LSTM for simplicity.
      • CNN-LSTM: 1D CNN (with max pooling) + LSTM to capture local and temporal features.
      • UnifiedCountGRU: GRU-based model with faster convergence.
    • Aggregated-Feature Models:
      • Random Forest Regressor
      • XGBoost Regressor
  • Comparison:
    Learning curves and MSE for the sequential models (displayed in a 2×2 grid) and error metrics (MAE) for the aggregated models were used to select the best approach.

  • Data Processing:
    Raw data is preprocessed by standardizing timestamps, filtering the acceleration magnitude using a Butterworth low-pass filter, and extracting key features. Peak detection on the filtered signal yields surrogate step labels for training.

How to Run

  1. Clean and fetch Flutter dependencies:
    flutter clean
    flutter pub get
  2. Run the project on Chrome:
    flutter run -d chrome

For detailed code, see stepcount.ipynb and for full documentation, refer to StepCountEversion.pdf.

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