<케라스 창시자에게 배우는 딥러닝 2판> 도서의 코드 저장소
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Mar 9, 2024 - Jupyter Notebook
<케라스 창시자에게 배우는 딥러닝 2판> 도서의 코드 저장소
Codes for my paper "SSDA-YOLO: Semi-supervised Domain Adaptive YOLO for Cross-Domain Object Detection"
Combine two images and produce new image with style of first image and content of second image
Official PyTorch implementation of QuantArt (CVPR2023)
PyTorch implementation of "Arbitrary Style Transfer in Real-time with Adaptive Instance Normalization"
PyTorch implementation of "A Learned Representation For Artistic Style"
A macOS Swift Playground for testing your image stylizing CoreML model
InstantID : Zero-shot Identity-Preserving Generation in Seconds | RunPod Serverless Worker
Docker image for InstantID : Zero-shot Identity-Preserving Generation in Seconds
A clear and lucid implementation of Instance Aware Tanslation in Image Style Transfer using GANs
Fei Gao's Homepage
Web app for investigating image style transfer with VGG19 built as a BSc final year project 2020/2021
Easy machine learning in PHP by leveraging the power of TensorFlow
This project aims to develop an application that leverages machine learning to transfer artistic styles onto real-time webcam feed or uploaded images using computer graphics techniques. The ML model will be responsible for understanding the artistic style, and the computer graphics part will apply this style to the input images.
In this study, we work to transfer the pattern to the basic face image from the pattern face image, by adjusting the latent space and moving within it.
We will visualize the style transfer output produced by monet_generator_model. We take 5 sample images that are photos of beautiful landscapes in the original dataset and feed them to the model.
This project features Image Style Transfer using the VGG19 neural network. Style transfer merges the artistic style of one image with the content of another. Leveraging the powerful VGG19 convolutional neural network, it excels in image-related tasks.
PyTorch implementation of Gatys et al., 2016 from scratch
To realize image style transfer using basic components of neural network
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