Multi-Modal Machine Learning toolkit based on PyTorch.

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Deep LearningTorchMM
Overview

简体中文 | English

TorchMM

简介

多模态学习工具包 TorchMM 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 TorchMM 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。
  • 成功的落地实践: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

框架

TorchMM 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/TorchMM.git

使用示例:

from torchmm import TorchMM

# 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', 
                  cuda=0)

或者

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

多模态融合

Average_Precision Coverage Example_AUC Macro_AUC Micro_AUC Ranking_loss
CMML 0.682 18.827 0.948 0.927 0.950 0.052
Early(add) ResNet+LSTM
Early(concat) ResNet+GRU

许可证书

本项目的发布受 Apache 2.0 license 许可认证。

Owner
njustkmg
njustkmg
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