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tasnif's Introduction

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Tasnif is a Python package designed for clustering images into user-defined classes based on their visual content. It utilizes deep learning to generate image embeddings, Principal Component Analysis (PCA) for dimensionality reduction, and K-means for clustering. Tasnif supports processing on both GPU and CPU, making it versatile for different computational environments.

Features

  • Generate embeddings for images using a pre-trained model.
  • Dimensionality reduction using PCA to enhance clustering performance.
  • Clustering of images into user-specified classes with K-means.
  • Visualization support by creating image grids for each cluster.
  • Efficient image reading and preprocessing utilities.

Installation

To install Tasnif, you need Python 3.6 or later. Clone this repository to your local machine and install the required dependencies:

pip install tasnif

Usage

Import Tasnif and initialize it with the desired number of classes, PCA dimensions, and whether to use GPU:

from tasnif import Tasnif

# Initialize Tasnif with 5 classes, PCA dimensions set to 16, and GPU usage
classifier = Tasnif(num_classes=5, pca_dim=16, use_gpu=False)

Read the images from a directory, calculate the embeddings, PCA, and perform K-means clustering:

# Read images from a specified directory
classifier.read('path/to/your/images')

# Calculate embeddings, PCA, and perform clustering
classifier.calculate()

Finally, export the clustered images and visualization grids to a specified directory:

# Export clustered images and grids
classifier.export('path/to/output')

To-Do

  • Prevent calculation if there is no image read (PCA & k-means)
  • Export embeddings
  • Make model independent from img2vec
  • Separate cpu and gpu installation and catch gpu errors

Contributing

Contributions to Tasnif are welcome! Please fork the repository and submit a pull request with your proposed changes.

Contributors

License

Tasnif is released under the MIT License. See the LICENSE file for more details.

tasnif's People

Contributors

cobanov avatar stealeristaken avatar yunusstalha avatar sinanerdinc avatar

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