aslan-ng/nnl_automl_model
Image Classification
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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 machine1 = Upper body machineThe dataset is stored on Hugging Face with two splits:
Total: 350+ images
This dataset was created as part of a course assignment to demonstrate:
It is intended for educational use in computer vision, data preprocessing, and augmentation workflows.
Lower, Upper). .jpg format. Applied using PyTorch/TorchVision:
These transformations expanded the dataset from 32 originals to 320 augmented samples, while preserving labels.
0 → Lower body machine 1 → Upper body machineLabels were manually assigned by the student based on machine function.
DatasetDict on Hugging Face.Upper vs Lower) and may not capture full machine usage