Photo2cartoon - 人像卡通化探索项目 (photo-to-cartoon translation project)

Overview

人像卡通化 (Photo to Cartoon)

中文版 | English Version

该项目为小视科技卡通肖像探索项目。您可使用微信扫描下方二维码或搜索“AI卡通秀”小程序体验卡通化效果。

也可以前往我们的ai开放平台进行在线体验:https://ai.minivision.cn/#/coreability/cartoon

技术交流QQ群:937627932

Updates

简介

人像卡通风格渲染的目标是,在保持原图像ID信息和纹理细节的同时,将真实照片转换为卡通风格的非真实感图像。我们的思路是,从大量照片/卡通数据中习得照片到卡通画的映射。一般而言,基于成对数据的pix2pix方法能达到较好的图像转换效果,但本任务的输入输出轮廓并非一一对应,例如卡通风格的眼睛更大、下巴更瘦;且成对的数据绘制难度大、成本较高,因此我们采用unpaired image translation方法来实现。

Unpaired image translation流派最经典方法是CycleGAN,但原始CycleGAN的生成结果往往存在较为明显的伪影且不稳定。近期的论文U-GAT-IT提出了一种归一化方法——AdaLIN,能够自动调节Instance Norm和Layer Norm的比重,再结合attention机制能够实现精美的人像日漫风格转换。

与夸张的日漫风不同,我们的卡通风格更偏写实,要求既有卡通画的简洁Q萌,又有明确的身份信息。为此我们增加了Face ID Loss,使用预训练的人脸识别模型提取照片和卡通画的ID特征,通过余弦距离来约束生成的卡通画。

此外,我们提出了一种Soft-AdaLIN(Soft Adaptive Layer-Instance Normalization)归一化方法,在反规范化时将编码器的均值方差(照片特征)与解码器的均值方差(卡通特征)相融合。

模型结构方面,在U-GAT-IT的基础上,我们在编码器之前和解码器之后各增加了2个hourglass模块,渐进地提升模型特征抽象和重建能力。

由于实验数据较为匮乏,为了降低训练难度,我们将数据处理成固定的模式。首先检测图像中的人脸及关键点,根据人脸关键点旋转校正图像,并按统一标准裁剪,再将裁剪后的头像输入人像分割模型去除背景。

Start

安装依赖库

项目所需的主要依赖库如下:

  • python 3.6
  • pytorch 1.4
  • tensorflow-gpu 1.14
  • face-alignment
  • dlib
  • onnxruntime

Clone:

git clone https://github.com/minivision-ai/photo2cartoon.git
cd ./photo2cartoon

下载资源

谷歌网盘 | 百度网盘 提取码:y2ch

  1. 人像卡通化预训练模型:photo2cartoon_weights.pt(20200504更新),存放在models路径下。
  2. 头像分割模型:seg_model_384.pb,存放在utils路径下。
  3. 人脸识别预训练模型:model_mobilefacenet.pth,存放在models路径下。(From: InsightFace_Pytorch
  4. 卡通画开源数据:cartoon_data,包含trainBtestB
  5. 人像卡通化onnx模型:photo2cartoon_weights.onnx 谷歌网盘,存放在models路径下。

测试

将一张测试照片(亚洲年轻女性)转换为卡通风格:

python test.py --photo_path ./images/photo_test.jpg --save_path ./images/cartoon_result.png

测试onnx模型

python test_onnx.py --photo_path ./images/photo_test.jpg --save_path ./images/cartoon_result.png

训练

1.数据准备

训练数据包括真实照片和卡通画像,为降低训练复杂度,我们对两类数据进行了如下预处理:

  • 检测人脸及关键点。
  • 根据关键点旋转校正人脸。
  • 将关键点边界框按固定的比例扩张并裁剪出人脸区域。
  • 使用人像分割模型将背景置白。

我们开源了204张处理后的卡通画数据,您还需准备约1000张人像照片(为匹配卡通数据,尽量使用亚洲年轻女性照片,人脸大小最好超过200x200像素),使用以下命令进行预处理:

python data_process.py --data_path YourPhotoFolderPath --save_path YourSaveFolderPath

将处理后的数据按照以下层级存放,trainAtestA中存放照片头像数据,trainBtestB中存放卡通头像数据。

├── dataset
    └── photo2cartoon
        ├── trainA
            ├── xxx.jpg
            ├── yyy.png
            └── ...
        ├── trainB
            ├── zzz.jpg
            ├── www.png
            └── ...
        ├── testA
            ├── aaa.jpg 
            ├── bbb.png
            └── ...
        └── testB
            ├── ccc.jpg 
            ├── ddd.png
            └── ...

2.训练

重新训练:

python train.py --dataset photo2cartoon

加载预训练参数:

python train.py --dataset photo2cartoon --pretrained_weights models/photo2cartoon_weights.pt

多GPU训练(仍建议使用batch_size=1,单卡训练):

python train.py --dataset photo2cartoon --batch_size 4 --gpu_ids 0 1 2 3

Q&A

Q:为什么开源的卡通化模型与小程序中的效果有差异?

A:开源模型的训练数据收集自互联网,为了得到更加精美的效果,我们在训练小程序中卡通化模型时,采用了定制的卡通画数据(200多张),且增大了输入分辨率。此外,小程序中的人脸特征提取器采用自研的识别模型,效果优于本项目使用的开源识别模型。

Q:如何选取效果最好的模型?

A:首先训练模型200k iterations,然后使用FID指标挑选出最优模型,最终挑选出的模型为迭代90k iterations时的模型。

Q:关于人脸特征提取模型。

A:实验中我们发现,使用自研的识别模型计算Face ID Loss训练效果远好于使用开源识别模型,若训练效果出现鲁棒性问题,可尝试将Face ID Loss权重置零。

Q:人像分割模型是否能用与分割半身像?

A:不能。该模型是针对本项目训练的专用模型,需先裁剪出人脸区域再输入。

Tips

我们开源的模型是基于亚洲年轻女性训练的,对于其他人群覆盖不足,您可根据使用场景自行收集相应人群的数据进行训练。我们的开放平台提供了能够覆盖各类人群的卡通化服务,您可前往体验。如有定制卡通风格需求请联系商务:18852075216。

参考

U-GAT-IT: Unsupervised Generative Attentional Networks with Adaptive Layer-Instance Normalization for Image-to-Image Translation [Paper][Code]

InsightFace_Pytorch

Owner
Minivision_AI
Minivision_AI
Official PyTorch implementation of "Contrastive Learning from Extremely Augmented Skeleton Sequences for Self-supervised Action Recognition" in AAAI2022.

AimCLR This is an official PyTorch implementation of "Contrastive Learning from Extremely Augmented Skeleton Sequences for Self-supervised Action Reco

Gty 44 Dec 17, 2022
Code for SIMMC 2.0: A Task-oriented Dialog Dataset for Immersive Multimodal Conversations

The Second Situated Interactive MultiModal Conversations (SIMMC 2.0) Challenge 2021 Welcome to the Second Situated Interactive Multimodal Conversation

Facebook Research 81 Nov 22, 2022
Unofficial Implementation of MLP-Mixer, gMLP, resMLP, Vision Permutator, S2MLPv2, RaftMLP, ConvMLP, ConvMixer in Jittor and PyTorch.

Unofficial Implementation of MLP-Mixer, gMLP, resMLP, Vision Permutator, S2MLPv2, RaftMLP, ConvMLP, ConvMixer in Jittor and PyTorch! Now, Rearrange and Reduce in einops.layers.jittor are support!!

130 Jan 08, 2023
Web service for facial landmark detection, head pose estimation, facial action unit recognition, and eye-gaze estimation based on OpenFace 2.0

OpenGaze: Web Service for OpenFace Facial Behaviour Analysis Toolkit Overview OpenFace is a fantastic tool intended for computer vision and machine le

Sayom Shakib 4 Nov 03, 2022
Official Tensorflow implementation of U-GAT-IT: Unsupervised Generative Attentional Networks with Adaptive Layer-Instance Normalization for Image-to-Image Translation (ICLR 2020)

U-GAT-IT — Official TensorFlow Implementation (ICLR 2020) : Unsupervised Generative Attentional Networks with Adaptive Layer-Instance Normalization fo

Junho Kim 6.2k Jan 04, 2023
Generate Contextual Directory Wordlist For Target Org

PathPermutor Generate Contextual Directory Wordlist For Target Org This script generates contextual wordlist for any target org based on the set of UR

8 Jun 23, 2021
Release of the ConditionalQA dataset

ConditionalQA Datasets accompanying the paper ConditionalQA: A Complex Reading Comprehension Dataset with Conditional Answers. Disclaimer This dataset

14 Oct 17, 2022
A self-supervised 3D representation learning framework named viewpoint bottleneck.

Pointly-supervised 3D Scene Parsing with Viewpoint Bottleneck Paper Created by Liyi Luo, Beiwen Tian, Hao Zhao and Guyue Zhou from Institute for AI In

63 Aug 11, 2022
Revisiting Video Saliency: A Large-scale Benchmark and a New Model (CVPR18, PAMI19)

DHF1K =========================================================================== Wenguan Wang, J. Shen, M.-M Cheng and A. Borji, Revisiting Video Sal

Wenguan Wang 126 Dec 03, 2022
Frequency Spectrum Augmentation Consistency for Domain Adaptive Object Detection

Frequency Spectrum Augmentation Consistency for Domain Adaptive Object Detection Main requirements torch = 1.0 torchvision = 0.2.0 Python 3 Environm

15 Apr 04, 2022
BasicNeuralNetwork - This project looks over the basic structure of a neural network and how machine learning training algorithms work

BasicNeuralNetwork - This project looks over the basic structure of a neural network and how machine learning training algorithms work. For this project, I used the sigmoid function as an activation

Manas Bommakanti 1 Jan 22, 2022
Deep learning library featuring a higher-level API for TensorFlow.

TFLearn: Deep learning library featuring a higher-level API for TensorFlow. TFlearn is a modular and transparent deep learning library built on top of

TFLearn 9.6k Jan 02, 2023
Node for thenewboston digital currency network.

Project setup For project setup see INSTALL.rst Community Join the community to stay updated on the most recent developments, project roadmaps, and ra

thenewboston 27 Jul 08, 2022
ICON: Implicit Clothed humans Obtained from Normals (CVPR 2022)

ICON: Implicit Clothed humans Obtained from Normals Yuliang Xiu · Jinlong Yang · Dimitrios Tzionas · Michael J. Black CVPR 2022 News 🚩 [2022/04/26] H

Yuliang Xiu 1.1k Jan 04, 2023
Software for Multimodalty 2D+3D Facial Expression Recognition (FER) UI

EmotionUI Software for Multimodalty 2D+3D Facial Expression Recognition (FER) UI. demo screenshot (with RealSense) required packages Python = 3.6 num

Yang Jiao 2 Dec 23, 2021
docTR by Mindee (Document Text Recognition) - a seamless, high-performing & accessible library for OCR-related tasks powered by Deep Learning.

docTR by Mindee (Document Text Recognition) - a seamless, high-performing & accessible library for OCR-related tasks powered by Deep Learning.

Mindee 1.5k Jan 01, 2023
Semantic Image Synthesis with SPADE

Semantic Image Synthesis with SPADE New implementation available at imaginaire repository We have a reimplementation of the SPADE method that is more

NVIDIA Research Projects 7.3k Jan 07, 2023
基于pytorch构建cyclegan示例

cyclegan-demo 基于Pytorch构建CycleGAN示例 如何运行 准备数据集 将数据集整理成4个文件,分别命名为 trainA, trainB:训练集,A、B代表两类图片 testA, testB:测试集,A、B代表两类图片 例如 D:\CODE\CYCLEGAN-DEMO\DATA

Koorye 3 Oct 18, 2022
Data visualization app for H&M competition in kaggle

handm_data_visualize_app Data visualization app by streamlit for H&M competition in kaggle. competition page: https://www.kaggle.com/competitions/h-an

Kyohei Uto 12 Apr 30, 2022
G-NIA model from "Single Node Injection Attack against Graph Neural Networks" (CIKM 2021)

Single Node Injection Attack against Graph Neural Networks This repository is our Pytorch implementation of our paper: Single Node Injection Attack ag

Shuchang Tao 18 Nov 21, 2022