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Deep Learning Simplified Repository (Proposing new issue)
🔴 Project Title : Style Transfer for Custom Images
🔴 Aim : To apply the artistic style of one image to the content of another image using various style transfer algorithms and determine the most effective method through comparative analysis.
🔴 Dataset : Custom images collected from diverse sources to ensure a variety of styles and contents for comprehensive testing.
🔴 Approach : Perform exploratory data analysis (EDA) to understand the characteristics and distribution of the custom images.
Implement and compare multiple style transfer algorithms:
Neural Style Transfer using VGG-19
Fast Style Transfer
Adaptive Instance Normalization (AdaIN)
StyleGAN-based approach
Evaluate the performance of each algorithm by comparing the visual quality and accuracy scores of the styled images.
Determine the best-fitting algorithm based on the comparative analysis results.
📍 Follow the Guidelines to Contribute in the Project :
You need to create a separate folder named as the Project Title.
Inside that folder, there will be four main components.
Images - To store the required images.
Dataset - To store the dataset or, information/source about the dataset.
Model - To store the machine learning model you've created using the dataset.
requirements.txt - This file will contain the required packages/libraries to run the project in other machines.
Inside the Model folder, the README.md file must be filled up properly, with proper visualizations and conclusions.
🔴🟡 Points to Note :
The issues will be assigned on a first come first serve basis, 1 Issue == 1 PR.
"Issue Title" and "PR Title should be the same. Include issue number along with it.
Follow Contributing Guidelines & Code of Conduct before start Contributing.
Approach for this Project :Perform exploratory data analysis (EDA) to understand the characteristics and distribution of the custom images.
Implement and compare multiple style transfer algorithms:
Neural Style Transfer using VGG-19
Fast Style Transfer
Adaptive Instance Normalization (AdaIN)
StyleGAN-based approach
Evaluate the performance of each algorithm by comparing the visual quality and accuracy scores of the styled images.
Determine the best-fitting algorithm based on the comparative analysis results.
What is your participant role? (Mention the Open Source program)
Happy Contributing 🚀
All the best. Enjoy your open source journey ahead. 😎
The text was updated successfully, but these errors were encountered:
Deep Learning Simplified Repository (Proposing new issue)
🔴 Project Title : Style Transfer for Custom Images
🔴 Aim : To apply the artistic style of one image to the content of another image using various style transfer algorithms and determine the most effective method through comparative analysis.
🔴 Dataset : Custom images collected from diverse sources to ensure a variety of styles and contents for comprehensive testing.
🔴 Approach : Perform exploratory data analysis (EDA) to understand the characteristics and distribution of the custom images.
Implement and compare multiple style transfer algorithms:
Neural Style Transfer using VGG-19
Fast Style Transfer
Adaptive Instance Normalization (AdaIN)
StyleGAN-based approach
Evaluate the performance of each algorithm by comparing the visual quality and accuracy scores of the styled images.
Determine the best-fitting algorithm based on the comparative analysis results.
📍 Follow the Guidelines to Contribute in the Project :
requirements.txt
- This file will contain the required packages/libraries to run the project in other machines.Model
folder, theREADME.md
file must be filled up properly, with proper visualizations and conclusions.🔴🟡 Points to Note :
✅ To be Mentioned while taking the issue :
Implement and compare multiple style transfer algorithms:
Neural Style Transfer using VGG-19
Fast Style Transfer
Adaptive Instance Normalization (AdaIN)
StyleGAN-based approach
Evaluate the performance of each algorithm by comparing the visual quality and accuracy scores of the styled images.
Determine the best-fitting algorithm based on the comparative analysis results.
Happy Contributing 🚀
All the best. Enjoy your open source journey ahead. 😎
The text was updated successfully, but these errors were encountered: