


Google and MIT propose a unified framework MAGE: representation learning surpasses MAE, and unsupervised image generation surpasses Latent Diffusion
Recognition and generation are the two core tasks in the field of artificial intelligence. If they can be merged into a unified system, these two tasks should be complementary. In fact, in natural language processing, models like BERT [1] are not only able to generate high-quality text but also extract features from the text.
However, in the field of computer vision, current image generation models and recognition models are mostly trained separately, without fully utilizing the synergy of these two tasks. This is mainly due to the fact that the models of image generation and image recognition usually have essential structural differences: the input of image generation is low-dimensional features or noise, and the output is a high-dimensional original image; in contrast, the input of image recognition is high-dimensional. dimensional original image, while the output is low-dimensional features.
Recently, researchers from MIT and Google Research proposed a representation learning method based on image semantic masking, which for the first time achieved image generation and representation in a unified framework learned and achieved SOTA performance on multiple data sets. The research paper has been accepted by CVPR 2023, and the relevant code and pre-trained model have been open source.
- ##Paper address: https://arxiv.org/abs/2211.09117
- Code address: https://github.com/LTH14/mage
In CVPR 2022 On, MAE [2] proposed a representation learning method based on image masks (MIM) and achieved very good results on multiple subtasks. At a masking rate of up to 75%, MAE can reconstruct an image that closely matches the semantics of the original image, thereby allowing the network to self-supervisedly learn features in the image. However, as shown in Figure 1, although the image reconstructed by MAE has similar semantic information to the original image, serious blurring and distortion problems occur. Similar issues arise in all MIM-based representation learning methods. At the same time, current generative models, whether diffusion models or GANs, lack the ability to extract high-quality image features.
Figure 1: Comparison of MAE and MAGE reconstruction
Method OverviewIn response to the above problems, the author of this article proposed MAGE (Masked Generative Encoder), which for the first time realized a unified image generation and feature extraction model. Different from the masking method where MIM acts directly on the image, MAGE proposes a masked image token modeling method based on image semantic symbols. As shown in the figure, MAGE first uses the VQGAN [3] encoder to convert the original image into discrete semantic symbols. After that, MAGE randomly masks it and uses the transformer-based encoder-decoder structure to reconstruct the mask. The reconstructed semantic symbols can be used to generate the original image through the VQGAN decoder. By using different masking rates in training, MAGE can train both generative models (nearly 100% masking rate) and representation learning (50%-80% masking rate). As shown in Figure 1, the image reconstructed by MAGE not only has semantic information consistent with the original image, but can also ensure the diversity and authenticity of the generated image at the same time.
##Figure 2: MAGE Structure DiagramExperimental results
MAGE has reached or exceeded SOTA on multiple image generation and image recognition tasks.
In the unsupervised image generation task of ImageNet, the FID of MAGE dropped from the previous > 20 to 7.04, even reaching the level of supervised image generation (the FID of supervised Latent Diffusion on ImageNet is 3.60) :
picture 3: MAGE unsupervised image generation example
MAGE can also perform various image editing tasks, including image inpainting, outpainting, and uncropping:
#Figure 4: MAGE image editing sample
In In terms of representation learning, MAGE has greatly improved compared to the current MIM method in tasks such as ImageNet linear probing, few-shot learning, and transfer learning, and can reach or exceed the level of the current optimal self-supervised learning method.
This article aims to unify image generation and representation learning. To this end, the author of this article proposes MAGE, a self-supervised learning framework based on image semantic masking. This framework is simple and efficient, and for the first time reaches or exceeds SOTA performance in both image generation and representation learning. Interested readers can view the original text of the paper to learn more research details.
The above is the detailed content of Google and MIT propose a unified framework MAGE: representation learning surpasses MAE, and unsupervised image generation surpasses Latent Diffusion. For more information, please follow other related articles on the PHP Chinese website!

Hot AI Tools

Undresser.AI Undress
AI-powered app for creating realistic nude photos

AI Clothes Remover
Online AI tool for removing clothes from photos.

Undress AI Tool
Undress images for free

Clothoff.io
AI clothes remover

AI Hentai Generator
Generate AI Hentai for free.

Hot Article

Hot Tools

Notepad++7.3.1
Easy-to-use and free code editor

SublimeText3 Chinese version
Chinese version, very easy to use

Zend Studio 13.0.1
Powerful PHP integrated development environment

Dreamweaver CS6
Visual web development tools

SublimeText3 Mac version
God-level code editing software (SublimeText3)

Hot Topics



DeepSeek is a powerful information retrieval tool. Its advantage is that it can deeply mine information, but its disadvantages are that it is slow, the result presentation method is simple, and the database coverage is limited. It needs to be weighed according to specific needs.

DeepSeek is a proprietary search engine that only searches in a specific database or system, faster and more accurate. When using it, users are advised to read the document, try different search strategies, seek help and feedback on the user experience in order to make the most of their advantages.

This article introduces the registration process of the Sesame Open Exchange (Gate.io) web version and the Gate trading app in detail. Whether it is web registration or app registration, you need to visit the official website or app store to download the genuine app, then fill in the user name, password, email, mobile phone number and other information, and complete email or mobile phone verification.

Why can’t the Bybit exchange link be directly downloaded and installed? Bybit is a cryptocurrency exchange that provides trading services to users. The exchange's mobile apps cannot be downloaded directly through AppStore or GooglePlay for the following reasons: 1. App Store policy restricts Apple and Google from having strict requirements on the types of applications allowed in the app store. Cryptocurrency exchange applications often do not meet these requirements because they involve financial services and require specific regulations and security standards. 2. Laws and regulations Compliance In many countries, activities related to cryptocurrency transactions are regulated or restricted. To comply with these regulations, Bybit Application can only be used through official websites or other authorized channels

It is crucial to choose a formal channel to download the app and ensure the safety of your account.

This article recommends the top ten cryptocurrency trading platforms worth paying attention to, including Binance, OKX, Gate.io, BitFlyer, KuCoin, Bybit, Coinbase Pro, Kraken, BYDFi and XBIT decentralized exchanges. These platforms have their own advantages in terms of transaction currency quantity, transaction type, security, compliance, and special features. For example, Binance is known for its largest transaction volume and abundant functions in the world, while BitFlyer attracts Asian users with its Japanese Financial Hall license and high security. Choosing a suitable platform requires comprehensive consideration based on your own trading experience, risk tolerance and investment preferences. Hope this article helps you find the best suit for yourself

To access the latest version of Binance website login portal, just follow these simple steps. Go to the official website and click the "Login" button in the upper right corner. Select your existing login method. If you are a new user, please "Register". Enter your registered mobile number or email and password and complete authentication (such as mobile verification code or Google Authenticator). After successful verification, you can access the latest version of Binance official website login portal.

This guide provides detailed download and installation steps for the official Bitget Exchange app, suitable for Android and iOS systems. The guide integrates information from multiple authoritative sources, including the official website, the App Store, and Google Play, and emphasizes considerations during download and account management. Users can download the app from official channels, including app store, official website APK download and official website jump, and complete registration, identity verification and security settings. In addition, the guide covers frequently asked questions and considerations, such as
