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Gym Machines Image Dataset

Dataset Summary

This dataset includes 30+ original, student-created images of gym machines (objects and small arrangements/scenes) with a binary classification target for each image:

  • 0 = Lower body machine
  • 1 = Upper body machine

The dataset is stored on Hugging Face with two splits:

  • original: 32 manually collected and labeled images
  • augmented: 320 synthetic samples generated via label-preserving transformations

Total: 350+ images


Purpose

This dataset was created as part of a course assignment to demonstrate:

  • Safe collection of original image data
  • Application of augmentation techniques for dataset expansion
  • Preparation and publishing of datasets to Hugging Face for reproducibility and sharing

It is intended for educational use in computer vision, data preprocessing, and augmentation workflows.


Composition

  • Subjects: Common gym machines (e.g., leg press, hack squat, chest press, lat pulldown).
  • Labels: Binary (Lower, Upper).
  • Images: 224×224 RGB, .jpg format.
  • Counts:
    • Original split: 32 images
    • Augmented split: 320 images

Data Collection

  • Images were captured safely by the student, without any people or personally identifiable information (PII).
  • Only objects and gym machines were included.
  • All images were resized to 224×224 pixels.

Preprocessing & Augmentation

Preprocessing

  • Converted to RGB
  • Resized to 224×224

Augmentation Techniques

Applied using PyTorch/TorchVision:

  • Random horizontal flip (p=0.5)
  • Random rotation (±20°)
  • Random color jitter (brightness, contrast, saturation ±0.3)
  • Random resized crop (scale = 0.8–1.0)
  • Gaussian blur

These transformations expanded the dataset from 32 originals to 320 augmented samples, while preserving labels.


Labels

  • Binary target:
    • 0 → Lower body machine
    • 1 → Upper body machine

Labels were manually assigned by the student based on machine function.


Splits

  • original → 32 images
  • augmented → 320 images
  • Published as a DatasetDict on Hugging Face.

Intended Use & Limitations

  • Use cases: Educational exercises in dataset handling, preprocessing, augmentation, and Hugging Face dataset publishing.
  • Not intended for: Medical, health, or workout guidance.
  • Limitations:
    • Small dataset size → not suitable for production training
    • Labels are simplified (Upper vs Lower) and may not capture full machine usage

Ethical Considerations

  • No people or personal information were included.
  • No sensitive content.
  • Strictly object-based dataset.

License

  • Released under CC BY-NC-SA 4.0 (Attribution–NonCommercial–ShareAlike).
  • You may use and adapt for educational/research purposes with attribution.
  • Not for commercial use.

AI Usage Disclosure

  • AI tools (e.g., ChatGPT) assisted in:
    • Structuring the dataset card
  • All images were student-created, not AI-generated.
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