Multi-Modal Machine Learning toolkit based on PaddlePaddle.

Related tags

Deep LearningPaddleMM
Overview

简体中文 | English

PaddleMM

简介

飞桨多模态学习工具包 PaddleMM 旨在于提供模态联合学习和跨模态学习算法模型库,为处理图片文本等多模态数据提供高效的解决方案,助力多模态学习应用落地。

近期更新

  • 2022.1.5 发布 PaddleMM 初始版本 v1.0

特性

  • 丰富的任务场景:工具包提供多模态融合、跨模态检索、图文生成等多种多模态学习任务算法模型库,支持用户自定义数据和训练。
  • 成功的落地应用:基于工具包算法已有相关落地应用,如球鞋真伪鉴定、球鞋风格迁移、家具图片自动描述、舆情监控等。

应用展示

  • 球鞋真伪鉴定 (更多信息欢迎访问我们的网站 Ysneaker !)
  • 更多应用

落地实践

  • 与百度人才智库(TIC)合作 智能招聘 简历分析,基于多模态融合算法并成功落地。

框架

PaddleMM 包括以下模块:

  • 数据处理:提供统一的数据接口和多种数据处理格式
  • 模型库:包括多模态融合、跨模态检索、图文生成、多任务算法
  • 训练器:对每种任务设置统一的训练流程和相关指标计算

使用

下载工具包

git clone https://github.com/njustkmg/PaddleMM.git

使用示例:

from paddlemm import PaddleMM

# config: Model running parameters, see configs/
# data_root: Path to dataset
# image_root: Path to images
# gpu: Which gpu to use

runner = PaddleMM(config='configs/cmml.yml',
                  data_root='data/COCO', 
                  image_root='data/COCO/images', 
                  gpu=0)

runner.train()
runner.test()

或者

python run.py --config configs/cmml.yml --data_root data/COCO --image_root data/COCO/images --gpu 0

模型库 (更新中)

[1] Comprehensive Semi-Supervised Multi-Modal Learning

[2] Stacked Cross Attention for Image-Text Matching

[3] Similarity Reasoning and Filtration for Image-Text Matching

[4] Show, Attend and Tell: Neural Image Caption Generation with Visual Attention

[5] Attention on Attention for Image Captioning

[6] VQA: Visual Question Answering

[7] ViLBERT: Pretraining Task-Agnostic Visiolinguistic Representations for Vision-and-Language Tasks

实验结果 (COCO) (更新中)

  • Multimodal fusion
Average_Precision Coverage Example_AUC Macro_AUC Micro_AUC Ranking_Loss
CMML 0.682 18.827 0.948 0.927 0.950 0.052 semi-supervised
Early(add) 0.974 16.681 0.969 0.952 0.968 0.031 VGG+LSTM
Early(add) 0.974 16.532 0.971 0.958 0.972 0.029 ResNet+GRU
Early(concat) 0.797 16.366 0.972 0.959 0.973 0.028 ResNet+LSTM
Early(concat) 0.798 16.541 0.971 0.959 0.972 0.029 ResNet+GRU
Early(concat) 0.795 16.704 0.969 0.952 0.968 0.031 VGG+LSTM
Late(mean) 0.733 17.849 0.959 0.947 0.963 0.041 ResNet+LSTM
Late(mean) 0.734 17.838 0.959 0.945 0.962 0.041 ResNet+GRU
Late(mean) 0.738 17.818 0.960 0.943 0.962 0.040 VGG+LSTM
Late(mean) 0.735 17.938 0.959 0.941 0.959 0.041 VGG+GRU
Late(max) 0.742 17.953 0.959 0.944 0.961 0.041 ResNet+LSTM
Late(max) 0.736 17.955 0.959 0.941 0.961 0.041 ResNet+GRU
Late(max) 0.727 17.949 0.958 0.940 0.959 0.042 VGG+LSTM
Late(max) 0.737 17.983 0.959 0.942 0.959 0.041 VGG+GRU
  • Image caption
Bleu-1 Bleu-2 Bleu-3 Bleu-4 Meteor Rouge Cider
NIC(paper) 71.8 50.3 35.7 25.0 23.0 - -
NIC-VGG(ours) 69.9 52.4 37.9 27.1 23.4 51.4 84.5
NIC-ResNet(ours) 72.8 56.0 41.4 30.1 25.2 53.7 95.9
AoANet-CE(paper) 78.7 - - 38.1 28.4 57.5 119.8
AoANet-CE(ours) 75.1 58.7 44.4 33.2 27.2 55.8 109.3

成果

多模态论文

  • Yang Yang, Chubing Zhang, Yi-Chu Xu, Dianhai Yu, De-Chuan Zhan, Jian Yang. Rethinking Label-Wise Cross-Modal Retrieval from A Semantic Sharing Perspective. Proceedings of the 30th International Joint Conference on Artificial Intelligence (IJCAI-2021), Montreal, Canada, 2021. (CCF-A).
  • Yang Yang, Ke-Tao Wang, De-Chuan Zhan, Hui Xiong, Yuan Jiang. Comprehensive Semi-Supervised Multi-Modal Learning. Proceedings of the 28th International Joint Conference on Artificial Intelligence (IJCAI-2019) , Macao, China, 2019. [Pytorch Code] [Paddle Code]
  • Yang Yang, Yi-Feng Wu, De-Chuan Zhan, Zhi-Bin Liu, Yuan Jiang. Deep Robust Unsupervised Multi-Modal Network. Proceedings of the 33rd AAAI Conference on Artificial Intelligence (AAAI-2019) , Honolulu, Hawaii, 2019.
  • Yang Yang, Yi-Feng Wu, De-Chuan Zhan, Yuan Jiang. Deep Multi-modal Learning with Cascade Consensus. Proceedings of the Pacific Rim International Conference on Artificial Intelligence (PRICAI-2018) , Nanjing, China, 2018.
  • Yang Yang, Yi-Feng Wu, De-Chuan Zhan, Zhi-Bin Liu, Yuan Jiang. Complex Object Classification: A Multi-Modal Multi-Instance Multi-Label Deep Network with Optimal Transport. Proceedings of the Annual Conference on ACM SIGKDD (KDD-2018) , London, UK, 2018. [Code]
  • Yang Yang, De-Chuan Zhan, Xiang-Rong Sheng, Yuan Jiang. Semi-Supervised Multi-Modal Learning with Incomplete Modalities. Proceedings of the 27th International Joint Conference on Artificial Intelligence (IJCAI-2018) , Stockholm, Sweden, 2018.
  • Yang Yang, De-Chuan Zhan, Ying Fan, and Yuan Jiang. Instance Specific Discriminative Modal Pursuit: A Serialized Approach. Proceedings of the 9th Asian Conference on Machine Learning (ACML-2017) , Seoul, Korea, 2017. [Best Paper] [Code]
  • Yang Yang, De-Chuan Zhan, Xiang-Yu Guo, and Yuan Jiang. Modal Consistency based Pre-trained Multi-Model Reuse. Proceedings of the 26th International Joint Conference on Artificial Intelligence (IJCAI-2017) , Melbourne, Australia, 2017.
  • Yang Yang, De-Chuan Zhan, Yin Fan, Yuan Jiang, and Zhi-Hua Zhou. Deep Learning for Fixed Model Reuse. Proceedings of the 31st AAAI Conference on Artificial Intelligence (AAAI-2017), San Francisco, CA. 2017.
  • Yang Yang, De-Chuan Zhan and Yuan Jiang. Learning by Actively Querying Strong Modal Features. Proceedings of the 25th International Joint Conference on Artificial Intelligence (IJCAI-2016), New York, NY. 2016, Page: 1033-1039.
  • Yang Yang, Han-Jia Ye, De-Chuan Zhan and Yuan Jiang. Auxiliary Information Regularized Machine for Multiple Modality Feature Learning. Proceedings of the 24th International Joint Conference on Artificial Intelligence (IJCAI-2015), Buenos Aires, Argentina, 2015, Page: 1033-1039.
  • Yang Yang, De-Chuan Zhan, Yi-Feng Wu, Zhi-Bin Liu, Hui Xiong, and Yuan Jiang. Semi-Supervised Multi-Modal Clustering and Classification with Incomplete Modalities. IEEE Transactions on Knowledge and Data Engineering (IEEE TKDE), 2020. (CCF-A)
  • Yang Yang, Zhao-Yang Fu, De-Chuan Zhan, Zhi-Bin Liu, Yuan Jiang. Semi-Supervised Multi-Modal Multi-Instance Multi-Label Deep Network with Optimal Transport. IEEE Transactions on Knowledge and Data Engineering (IEEE TKDE), 2020. (CCF-A)

更多论文欢迎访问我们的网站 njustlkmg

飞桨论文复现挑战赛

  • 飞桨论文复现挑战赛 (第四期):《Comprehensive Semi-Supervised Multi-Modal Learning》赛题冠军
  • 飞桨论文复现挑战赛 (第五期):《From Recognition to Cognition: Visual Commonsense Reasoning》赛题冠军

贡献

  • 非常感谢百度人才智库(TIC)提供的技术和应用落地支持。
  • 我们非常欢迎您为 PaddleMM 贡献代码,也十分感谢你的反馈。

许可证书

本项目的发布受 Apache 2.0 license 许可认证。

Owner
njustkmg
njustkmg
Optimus: the first large-scale pre-trained VAE language model

Optimus: the first pre-trained Big VAE language model This repository contains source code necessary to reproduce the results presented in the EMNLP 2

314 Dec 19, 2022
Combining Reinforcement Learning and Constraint Programming for Combinatorial Optimization

Hybrid solving process for combinatorial optimization problems Combinatorial optimization has found applications in numerous fields, from aerospace to

117 Dec 13, 2022
General Multi-label Image Classification with Transformers

General Multi-label Image Classification with Transformers Jack Lanchantin, Tianlu Wang, Vicente Ordóñez Román, Yanjun Qi Conference on Computer Visio

QData 154 Dec 21, 2022
[CVPR 2021] 'Searching by Generating: Flexible and Efficient One-Shot NAS with Architecture Generator'

[CVPR2021] Searching by Generating: Flexible and Efficient One-Shot NAS with Architecture Generator Overview This is the entire codebase for the paper

35 Dec 01, 2022
Stock-history-display - something like a easy yearly review for your stock performance

Stock History Display Available on Heroku: https://stock-history-display.herokua

LiaoJJ 1 Jan 07, 2022
Official code release for: EditGAN: High-Precision Semantic Image Editing

Official code release for: EditGAN: High-Precision Semantic Image Editing

565 Jan 05, 2023
PyTorch implementation(s) of various ResNet models from Twitch streams.

pytorch-resnet-twitch PyTorch implementation(s) of various ResNet models from Twitch streams. Status: ResNet50 currently not working. Will update in n

Daniel Bourke 3 Jan 11, 2022
RATE: Overcoming Noise and Sparsity of Textual Features in Real-Time Location Estimation (CIKM'17)

RATE: Overcoming Noise and Sparsity of Textual Features in Real-Time Location Estimation This is the implementation of RATE: Overcoming Noise and Spar

Yu Zhang 5 Feb 10, 2022
State of the Art Neural Networks for Deep Learning

pyradox This python library helps you with implementing various state of the art neural networks in a totally customizable fashion using Tensorflow 2

Ritvik Rastogi 60 May 29, 2022
Code for "Diversity can be Transferred: Output Diversification for White- and Black-box Attacks"

Output Diversified Sampling (ODS) This is the github repository for the NeurIPS 2020 paper "Diversity can be Transferred: Output Diversification for W

50 Dec 11, 2022
[CVPR'2020] DeepDeform: Learning Non-rigid RGB-D Reconstruction with Semi-supervised Data

DeepDeform (CVPR'2020) DeepDeform is an RGB-D video dataset containing over 390,000 RGB-D frames in 400 videos, with 5,533 optical and scene flow imag

Aljaz Bozic 165 Jan 09, 2023
This script runs neural style transfer against the provided content image.

Neural Style Transfer Content Style Output Description: This script runs neural style transfer against the provided content image. The content image m

Martynas Subonis 0 Nov 25, 2021
PyTorch Implement for Path Attention Graph Network

SPAGAN in PyTorch This is a PyTorch implementation of the paper "SPAGAN: Shortest Path Graph Attention Network" Prerequisites We prefer to create a ne

Yang Yiding 38 Dec 28, 2022
🎃 Core identification module of AI powerful point reading system platform.

ppReader-Kernel Intro Core identification module of AI powerful point reading system platform. Usage 硬件: Windows10、GPU:nvdia GTX 1060 、普通RBG相机 软件: con

CrashKing 1 Jan 11, 2022
A PyTorch implementation of the paper "Semantic Image Synthesis via Adversarial Learning" in ICCV 2017

Semantic Image Synthesis via Adversarial Learning This is a PyTorch implementation of the paper Semantic Image Synthesis via Adversarial Learning. Req

Seonghyeon Nam 146 Nov 25, 2022
Meta-learning for NLP

Self-Supervised Meta-Learning for Few-Shot Natural Language Classification Tasks Code for training the meta-learning models and fine-tuning on downstr

IESL 43 Nov 08, 2022
A code implementation of AC-GC: Activation Compression with Guaranteed Convergence, in NeurIPS 2021.

Code For AC-GC: Lossy Activation Compression with Guaranteed Convergence This code is intended to be used as a supplemental material for submission to

Dave Evans 2 Nov 01, 2022
Official repository of "DeepMIH: Deep Invertible Network for Multiple Image Hiding", TPAMI 2022.

DeepMIH: Deep Invertible Network for Multiple Image Hiding (TPAMI 2022) This repo is the official code for DeepMIH: Deep Invertible Network for Multip

Junpeng Jing 67 Nov 22, 2022
Leveraging Instance-, Image- and Dataset-Level Information for Weakly Supervised Instance Segmentation

Leveraging Instance-, Image- and Dataset-Level Information for Weakly Supervised Instance Segmentation This paper has been accepted and early accessed

Yun Liu 39 Sep 20, 2022
GAN-STEM-Conv2MultiSlice - Exploring Generative Adversarial Networks for Image-to-Image Translation in STEM Simulation

GAN-STEM-Conv2MultiSlice GAN method to help covert lower resolution STEM images generated by convolution methods to higher resolution STEM images gene

UW-Madison Computational Materials Group 2 Feb 10, 2021