A tensorflow/keras implementation of StyleGAN to generate images of new Pokemon.

Overview

PokeGAN

A tensorflow/keras implementation of StyleGAN to generate images of new Pokemon.

Dataset

The model has been trained on dataset that includes 819 pokémon.
You can download dataset from this kaggle link.

Dependencies

I have used the following versions for code work:

  • python==3.8.8
  • tensorflow==2.4.1
  • tensorflow-gpu==2.4.1
  • numpy==1.19.1
  • h5py==2.10.0

Note

There are several difficulties in pokemon generation using GAN :

  • The difficulty of GAN training is well known; changing a hyperparameter can greatly change the results.
  • The dataset size is too small! 819 different pokemon images are not enough. For this reason, I applied data augmentation on the data; these are the transformations applied :
img_transf = tf.keras.Sequential([
            	tf.keras.layers.experimental.preprocessing.RandomContrast(factor=(0.05, 0.15)),
                image_aug.RandomBrightness(brightness_delta=(-0.15, 0.15)),
                image_aug.PowerLawTransform(gamma=(0.8,1.2)),
                image_aug.RandomSaturation(sat=(0, 2)),
                image_aug.RandomHue(hue=(0, 0.15)),
                tf.keras.layers.experimental.preprocessing.RandomFlip("horizontal"),
	    	tf.keras.layers.experimental.preprocessing.RandomTranslation(height_factor=(-0.10, 0.10), width_factor=(-0.10, 0.10)),
		tf.keras.layers.experimental.preprocessing.RandomZoom(height_factor=(-0.10, 0.10), width_factor=(-0.10, 0.10)),
		tf.keras.layers.experimental.preprocessing.RandomRotation(factor=(-0.10, 0.10))])
  • StyleGAN training is very expensive! I trained the model starting from a 4x4 resolution up to the final resolution of 256x256. The model was trained for 8 days using a Tesla V100 32GB SXM2.
    To get better results you need to use higher resolutions and train for longer time.

Results

These are some examples of new pokémon generated by the model :

New Generated Pokémon

More results

You can see hundreds of new pokemon here.
I repeat again it : to get better results (better details in pokemon) is necessary to train for more time.

References

This code implementation is inspired by the unofficial keras implementation of styleGAN.

Owner
I love computer vision. I love artificial intelligence. Machine Learning and Big Data master's degree student.
An Intelligent Self-driving Truck System For Highway Transportation

Inceptio Intelligent Truck System An Intelligent Self-driving Truck System For Highway Transportation Note The code is still in development. OS requir

InceptioResearch 11 Jul 13, 2022
A real-time motion capture system that estimates poses and global translations using only 6 inertial measurement units

TransPose Code for our SIGGRAPH 2021 paper "TransPose: Real-time 3D Human Translation and Pose Estimation with Six Inertial Sensors". This repository

Xinyu Yi 261 Dec 31, 2022
CenterPoint 3D Object Detection and Tracking using center points in the bird-eye view.

CenterPoint 3D Object Detection and Tracking using center points in the bird-eye view. Center-based 3D Object Detection and Tracking, Tianwei Yin, Xin

Tianwei Yin 134 Dec 23, 2022
Combining Latent Space and Structured Kernels for Bayesian Optimization over Combinatorial Spaces

This repository contains source code for the paper Combining Latent Space and Structured Kernels for Bayesian Optimization over Combinatorial Spaces a

9 Nov 21, 2022
Pytorch implementation of "ARM: Any-Time Super-Resolution Method"

ARM-Net Dependencies Python 3.6 Pytorch 1.7 Results Train Data preprocessing cd data_scripts python extract_subimages_test.py python data_augmentation

Bohong Chen 55 Nov 24, 2022
Code for the paper Task Agnostic Morphology Evolution.

Task-Agnostic Morphology Optimization This repository contains code for the paper Task-Agnostic Morphology Evolution by Donald (Joey) Hejna, Pieter Ab

Joey Hejna 18 Aug 04, 2022
Contains supplementary materials for reproduce results in HMC divergence time estimation manuscript

Scalable Bayesian divergence time estimation with ratio transformations This repository contains the instructions and files to reproduce the analyses

Suchard Research Group 1 Sep 21, 2022
Repo for the Video Person Clustering dataset, and code for the associated paper

Video Person Clustering Repo for the Video Person Clustering dataset, and code for the associated paper. This reporsitory contains the Video Person Cl

Andrew Brown 47 Nov 02, 2022
Building blocks for uncertainty-aware cycle consistency presented at NeurIPS'21.

UncertaintyAwareCycleConsistency This repository provides the building blocks and the API for the work presented in the NeurIPS'21 paper Robustness vi

EML Tübingen 19 Dec 12, 2022
Trading Strategies for Freqtrade

Freqtrade Strategies Strategies for Freqtrade, developed primarily in a partnership between @werkkrew and @JimmyNixx from the Freqtrade Discord. Use t

Bryan Chain 242 Jan 07, 2023
Self-Supervised Generative Style Transfer for One-Shot Medical Image Segmentation

Self-Supervised Generative Style Transfer for One-Shot Medical Image Segmentation This repository contains the Pytorch implementation of the proposed

Devavrat Tomar 19 Nov 10, 2022
Pure python PEMDAS expression solver without using built-in eval function

pypemdas Pure python PEMDAS expression solver without using built-in eval function. Supports nested parenthesis. Supported operators: + - * / ^ Exampl

1 Dec 22, 2021
The source code and dataset for the RecGURU paper (WSDM 2022)

RecGURU About The Project Source code and baselines for the RecGURU paper "RecGURU: Adversarial Learning of Generalized User Representations for Cross

Chenglin Li 17 Jan 07, 2023
A big endian Gentoo port developed on a Pine64.org RockPro64

Gentoo-aarch64_be A big endian Gentoo port developed on a Pine64.org RockPro64 The endian wars are over... little endian won. As a result, it is incre

Rory Bolt 6 Dec 07, 2022
A Partition Filter Network for Joint Entity and Relation Extraction EMNLP 2021

EMNLP 2021 - A Partition Filter Network for Joint Entity and Relation Extraction

zhy 127 Jan 04, 2023
A mini lib that implements several useful functions binding to PyTorch in C++.

Torch-gather A mini library that implements several useful functions binding to PyTorch in C++. What does gather do? Why do we need it? When dealing w

maxwellzh 8 Sep 07, 2022
Contrastive Learning with Non-Semantic Negatives

Contrastive Learning with Non-Semantic Negatives This repository is the official implementation of Robust Contrastive Learning Using Negative Samples

39 Jul 31, 2022
BlockUnexpectedPackets - Preventing BungeeCord CPU overload due to Layer 7 DDoS attacks by scanning BungeeCord's logs

BlockUnexpectedPackets This script automatically blocks DDoS attacks that are sp

SparklyPower 3 Mar 31, 2022
This repo contains the official code of our work SAM-SLR which won the CVPR 2021 Challenge on Large Scale Signer Independent Isolated Sign Language Recognition.

Skeleton Aware Multi-modal Sign Language Recognition By Songyao Jiang, Bin Sun, Lichen Wang, Yue Bai, Kunpeng Li and Yun Fu. Smile Lab @ Northeastern

Isen (Songyao Jiang) 128 Dec 08, 2022
Group R-CNN for Point-based Weakly Semi-supervised Object Detection (CVPR2022)

Group R-CNN for Point-based Weakly Semi-supervised Object Detection (CVPR2022) By Shilong Zhang*, Zhuoran Yu*, Liyang Liu*, Xinjiang Wang, Aojun Zhou,

Shilong Zhang 129 Dec 24, 2022