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--- |
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license: mit |
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task_categories: |
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- feature-extraction |
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language: |
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- en |
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tags: |
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- sensor |
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- physics |
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--- |
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# Hand Detection Training Data |
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This folder contains sensor data collected from mobile devices for training the hand detection model. |
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## Overview |
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The dataset includes accelerometer and gyroscope readings from 2 subjects, each holding a device with both their left and right hands. This data is used to train the Random Forest classifier that achieves 94.6% accuracy in detecting which hand is holding the device. |
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## Directory Structure |
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``` |
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hand_data/ |
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├── accelerometer/ # Accelerometer sensor data (primary) |
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│ ├── s-1_left_hand.csv # Subject 1, left hand (39,102 samples) |
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│ ├── s-1_right_hand.csv # Subject 1, right hand (30,528 samples) |
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│ ├── s-2_left_hand.csv # Subject 2, left hand (44,724 samples) |
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│ └── s-2_right_hand.csv # Subject 2, right hand (35,408 samples) |
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│ |
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└── gyrocop/ # Gyroscope data (supplementary) |
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├── s-1_left_hand.csv # Subject 1, left hand |
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└── s-1_right_hand.csv # Subject 1, right hand |
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``` |
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## Data Format |
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### Accelerometer Data |
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Each CSV file contains timestamped 3-axis accelerometer readings: |
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| Column | Type | Description | |
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|-----------|-----------|------------------------------------------| |
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| timestamp | datetime | ISO 8601 format (e.g., 2025-12-27T09:13:07.598506) | |
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| x | float | X-axis acceleration (m/s²) | |
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| y | float | Y-axis acceleration (m/s²) | |
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| z | float | Z-axis acceleration (m/s²) | |
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**Example:** |
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```csv |
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timestamp,x,y,z |
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2025-12-27T09:13:07.598506,0.849452,3.895515,8.087741 |
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2025-12-27T09:13:08.083118,0.727418,4.000800,8.099705 |
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``` |
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### Gyroscope Data |
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Similar structure with angular velocity measurements (°/s). |
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## Dataset Statistics |
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### Total Samples |
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- **Subject 1 (Left)**: 39,102 samples |
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- **Subject 1 (Right)**: 30,528 samples |
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- **Subject 2 (Left)**: 44,724 samples |
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- **Subject 2 (Right)**: 35,408 samples |
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- **Total**: 149,762 samples |
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### Collection Method |
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- Device: Mobile phone with accelerometer sensor |
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- Sampling rate: ~50-100 Hz (varies) |
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- Duration: Multiple sessions per subject/hand |
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- Environment: Normal daily usage patterns |
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## Data Characteristics |
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### X-Axis (Left/Right Tilt) |
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- **Primary discriminator** for hand detection |
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- Left hand: Positive values (device tilts right) |
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- Right hand: Negative values (device tilts left) |
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- Statistical significance: p < 0.000001 |
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### Y-Axis (Forward/Backward Tilt) |
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- Secondary feature |
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- Shows hand-specific patterns |
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- Less discriminative than X-axis |
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### Z-Axis (Vertical) |
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- Represents gravity component |
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- Generally around 9.8 m/s² when stationary |
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- Varies with device orientation |
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### Magnitude |
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- Calculated: √(x² + y² + z²) |
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- Overall movement intensity |
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- Helps distinguish activity levels |
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## Usage in Training |
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This data is used in [../which_hand_you_use.ipynb](https://github.com/rockerritesh/sensor/blob/main/hand/which_hand_you_use.ipynb) for: |
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1. **Exploratory Data Analysis (EDA)** |
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- Distribution analysis |
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- Statistical testing |
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- Correlation analysis |
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- Time series visualization |
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2. **Feature Engineering** |
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- Calculate magnitude |
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- Window-based statistics (mean, std, min, max) |
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- Temporal features (deltas, trends) |
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3. **Model Training** |
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- Single-point Random Forest (94.6% accuracy) |
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- Windowed Random Forest (96%+ accuracy) |
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- PCA for visualization |
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## File Sizes |
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- `s-1_left_hand.csv`: ~2.1 MB |
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- `s-1_right_hand.csv`: ~1.7 MB |
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- `s-2_left_hand.csv`: ~2.4 MB |
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- `s-2_right_hand.csv`: ~2.0 MB |
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**Total**: ~8.2 MB (accelerometer only) |
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## Data Quality |
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### Completeness |
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✅ No missing values |
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✅ Continuous timestamps |
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✅ Consistent format across all files |
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### Statistical Validation |
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✅ Normal distribution per axis |
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✅ Significant hand differences (p < 0.05) |
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✅ Consistent patterns across subjects |
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## Privacy & Ethics |
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- Data collected with informed consent |
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- No personally identifiable information |
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- Used solely for research purposes |
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- Anonymized subject identifiers (S1, S2) |
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## Collection Guidelines |
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If collecting additional data: |
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1. **Consistency**: Use same device/settings |
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2. **Duration**: Minimum 5-10 minutes per hand |
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3. **Activity**: Natural usage (browsing, typing, etc.) |
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4. **Labeling**: Clear hand identification |
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5. **Format**: Match existing CSV structure |
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## Notes |
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- This data is **excluded from git** (see `.gitignore`) |
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- Keep data locally or use Git LFS for large files |
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- Model files are generated from this data |
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- Data collection scripts in `shared/` folder |
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## Related Files |
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- **Training**: [../which_hand_you_use.ipynb](https://github.com/rockerritesh/sensor/blob/main/hand/which_hand_you_use.ipynb) |
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- **Models**: `hand_classifier_*.pkl` files |
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- **Collection**: `collect_data.py` in shared folder |
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--- |
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**Last Updated**: December 2025 |
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**Format Version**: 1.0 |
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**Total Samples**: 149,762 |
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