He Kaiming's Team's New Work: After Deleting VAE and Private Data, Text-to-Image Generation Becomes Even Stronger

marsbitPublished on 2026-06-22Last updated on 2026-06-22

Abstract

KaiMing He's team introduces **MiniT2I**, a minimalist text-to-image (T2I) model that challenges the complexity of mainstream approaches. It eliminates components commonly considered essential: the VAE encoder-decoder, AdaLN conditioning mechanisms, auxiliary losses, private training data, and post-training alignment stages like RL/DPO. Instead, it uses a pure flow-matching objective trained directly on RGB pixels. The model employs a simplified **MM-JiT** Transformer architecture. It removes AdaLN blocks for conditioning and instead prepends two lightweight text adapter blocks to a standard pre-norm Transformer, allowing frozen T5 text features to adapt to the denoiser. Training follows a two-stage, LLM-like paradigm using only public datasets: pre-training on LLaVA-recaptioned CC12M for coverage, followed by fine-tuning on ~120k high-quality image-text pairs. With just 258M parameters (B/16), MiniT2I achieves competitive scores (0.87 on GenEval, 84.2 on DPG-Bench), outperforming larger pixel-space models. Scaling to 912M parameters (L/16) yields results comparable to SD3-Medium (~2B parameters) in style, composition, and imagination, though it lags in text rendering and named entities due to public data limitations. Key advantages include lower computational cost (~570 GFLOPs vs. ~1379 for latent models) and architectural simplicity. Acknowledged limitations include patch boundary artifacts in pixel space, side effects of high CFG scales, resolution ceilings for sequence...

The field of text-to-image generation has long been a fiercely competitive red ocean, seemingly with no room left to innovate.

What do you need to train a powerful text-to-image model today?

Following the current mainstream approach, you would need: a pre-trained VAE encoder-decoder, concatenated text encoders, meticulously designed conditional injection mechanisms, massive datasets, RL or DPO alignment phases...

Overall, there seems to be a consensus: text-to-image generation must be this complex.

He Kaiming's team, however, takes a contrarian approach, offering a new perspective in the field of text-to-image models. They have released MiniT2I — a minimalist, pixel-space text-to-image model that deliberately pursues simplicity.

No VAE encoder-decoder, no AdaLN conditional injection, no auxiliary loss functions, no private data, no RL/DPO alignment, just pure flow matching trained directly on pixels. The 258M-parameter B/16 version achieves 0.87 on GenEval and 84.2 on DPG-Bench, surpassing pixel-space models several times its size.

The core proposition of MiniT2I is: If text conditioning is treated as 'context tokens with semantic information' and injected into the model, text-to-image generation and class-conditional ImageNet generation are not fundamentally that different — the architecture can be similar, computational requirements comparable, and even the scale of data can be aligned.

  • Paper Title: A Minimalist Baseline for Text-to-Image Generation
  • Technical Blog: https://peppaking8.github.io/#/post/minit2i
  • Open Source Repo: https://github.com/PeppaKing8/minit2i-jax

Technical Approach: Subtraction at Every Step

Direct Pixel-Space Output, No VAE

MiniT2I's first design choice is radical: discard the VAE, perform denoising directly on RGB pixels.

Latent Diffusion Models are the current mainstream paradigm, first compressing images into a low-dimensional latent space using an autoencoder before diffusion. This makes high-resolution generation feasible, but at the cost of introducing reconstruction error, an extra training phase, and misalignment between the encoder and denoiser objectives.

MiniT2I's choice of pixel space is pragmatic: For 512×512 resolution, using 16×16 patches to divide the image into 1024 tokens keeps the sequence length well within the Transformer's comfort zone. Removing the VAE reduces single-step forward computation from ~1379 GFLOPs to ~570 GFLOPs (B/16 setting), and eliminates the ceiling on reconstruction accuracy — the output quality is only limited by the denoiser's capability.

Experiments confirm this: Under the same parameter budget, pixel models achieve FID on par with latent space models (18.7 vs 19.0), but with a 5x lower per-step cost.

MM-JiT Architecture: Returning to a Simple Transformer

SD3's MM-DiT uses AdaLN (Adaptive Layer Normalization) within each block to inject timestep and pooled text embeddings into the network — each sub-block needs to compute scale, shift, and gate parameters generated by an extra MLP from the conditioning vectors. This is an elaborate modulation mechanism, but MiniT2I finds it non-essential.

The proposed MM-JiT architecture does two things:

1. Add Two Text Adapter Layers: Insert two lightweight Transformer blocks before joint attention, allowing the frozen T5 features to first 'adapt' to the denoiser's needs.

2. Remove the AdaLN Branch: No longer inject timestep and global text information through an additional path. The model can still perceive noise levels — because the noise-corrupted image itself carries timestep information.

The result is a clean architecture nearly identical to a standard pre-normalization Transformer. Removing AdaLN reduces parameters, allowing for more layers within the same compute budget (12 layers → 17 layers). FID drops from 18.7 to 13.7, and the architecture itself is easier to understand and modify.

Training Data: Fully Public, Two-Phase

MiniT2I's training data also pursues minimalism:

  • Pre-training: LLaVA-recaptioned CC12M (publicly available VLM re-captioned dataset), 250K steps
  • Fine-tuning: ~120K high-quality image-text pairs (BLIP3o-60K + LAION DALL・E 3 Discord set + ShareGPT-4o-Image), 40K steps

This 'pre-train then fine-tune' two-stage pattern directly mirrors LLM training paradigms: pre-training buys coverage, fine-tuning teaches the model what a good answer is. Ablations show both are indispensable — pre-training alone yields acceptable image quality but poor prompt following; fine-tuning alone makes the model's world too narrow, causing generative diversity to collapse.

Results: Small Model, Big Performance

In comparisons among pixel-space text-to-image models, MiniT2I offers exceptional value:

MiniT2I-B/16, with only ~600M total parameters (including text encoder), surpasses models 3-4 times its size on GenEval and DPG-Bench. Moreover, training cost is extremely low: the B/32 ablation model required only about 3 days on 8 H100s, with total training FLOPs comparable to a standard 200-epoch ImageNet experiment.

Scaling to L/16 (912M parameters) yields noticeable improvements in style diversity, spatial relationships, and text rendering, achieving quality on imaginative scenes comparable to or even better than SD3-Medium (~2B parameters).

In the more comprehensive PRISM-Bench evaluation, MiniT2I-L/16 performs well in style, composition, and imagination dimensions (79.9, 78.4, 57.9), approaching SD3-Medium levels. However, gaps remain in text rendering (30.6 vs SD3's 50.9) and named entities (60.3 vs 66.3) — the team acknowledges these are inherent limitations of the public data recipe, requiring targeted data to bridge.

Limitations and Outlook

MiniT2I is a proof of concept for a technical path, not a final product. The team honestly points out several unresolved issues:

  • Patch artifacts in pixel space: Measurable discontinuities exist at patch boundaries (gradients 17-22% higher at boundaries than elsewhere), a problem latent-space models do not have.
  • Side effects of CFG in pixel space: High guidance scales (~6) push local tokens away from the data manifold, directly exposing visual artifacts without a decoder's 'smoothing' effect.
  • Resolution ceiling: Works well at 512×512 currently; pushing to 4K+ requires longer sequences or more efficient attention mechanisms.
  • Data bottleneck: Text rendering and named entities remain weaker than industrial systems, requiring specialized data augmentation.

MiniT2I demonstrates that state-of-the-art text-to-image generation is no longer a game only for top industrial labs.

When a 258M-parameter model, trained on purely public data with academic-level compute for just 3 days, can defeat opponents orders of magnitude larger, perhaps text-to-image is undergoing a paradigm shift from 'brute force' to 'distillation'.

"T2I is no longer an insurmountable wall. Welcome to use and improve it, to build a simpler baseline."

This article is from the WeChat public account "机器之心" (Almost Human)

Trending Cryptos

Related Questions

QWhat is the main contribution or innovation of the MiniT2I model proposed by He Kaiming's team?

AThe main contribution is proposing MiniT2I, a minimalist text-to-image baseline model. It removes numerous complex components standard in current models—such as the VAE encoder-decoder, the AdaLN conditional injection mechanism, auxiliary loss functions, and private training data—and relies solely on flow matching objectives trained directly on pixel space. It demonstrates that with a simpler architecture and public data, it can achieve competitive performance against much larger models.

QHow does the architectural design of MiniT2I's MM-JiT differ from the commonly used MM-DiT in models like SD3?

AThe MM-JiT architecture in MiniT2I differs from MM-DiT by performing simplification in two key ways. First, it adds two lightweight text adapter Transformer blocks before joint attention to help frozen T5 features adapt to the denoiser. Second, and more importantly, it deletes the complex AdaLN (Adaptive Layer Normalization) branches used to inject timestep and text conditioning. This results in a cleaner, near-standard pre-norm Transformer architecture, reducing parameters and allowing for more layers within the same compute budget.

QWhat is the core argument for MiniT2I's choice to operate directly in pixel space instead of a latent space like most models?

AThe core argument is simplicity and alignment. Removing the VAE eliminates several issues: reconstruction error, extra training stages, and misalignment between encoder and denoiser objectives. For 512x512 images, patchifying into 1024 16x16 tokens keeps the sequence length manageable for Transformers. This direct approach reduces computational cost per forward pass significantly (~570 vs ~1379 GFLOPs for the B/16 configuration) and removes the upper bound of reconstruction accuracy, meaning the output quality depends directly on the denoiser's capability.

QWhat were the two stages of data used to train MiniT2I, and why was this two-stage approach necessary?

AMiniT2I was trained in two stages using only public data: 1) Pre-training on LLaVA-recaptioned CC12M (a VLM-recaptioned dataset) for 250K steps. 2) Fine-tuning on a combined set of ~120K high-quality image-text pairs from sources like BLIP3o-60K, LAION DALL・E 3 Discord set, and ShareGPT-4o-Image for 40K steps. This 'pre-train then fine-tune' paradigm mirrors LLM training. Ablation studies showed both stages are essential: pre-training alone gives good image quality but poor prompt following, while fine-tuning alone causes a collapse in generation diversity due to a limited worldview.

QAccording to the article, what are some of the key limitations or unsolved problems with the MiniT2I approach?

AThe key limitations highlighted include: 1) Patch boundary artifacts in pixel space, leading to measurable discontinuities not present in latent models. 2) Negative side effects of high CFG (Classifier-Free Guidance) scales in pixel space, which push local tokens off the data manifold and manifest as visual flaws. 3) A resolution ceiling, as scaling to 4K+ would require longer sequences or more efficient attention. 4) Data bottlenecks, particularly in text rendering and named entity accuracy, which lag behind industrial systems and would require specialized data to improve.

Related Reads

Two Giants' Credit Expansion: Loan Balances of $9.9 Billion vs. $14.6 Billion, Brazil Emerges as the Main Battlefield

Title: Two Giants "Credit" Surge: Loan Balances of 99 Billion vs. 146 Billion USD, Brazil Emerges as Main Battlefield Summary: The article compares the rapid expansion of credit businesses by two major e-commerce and fintech players, Sea (via Monee) and Mercado Libre (via Mercado Pago), in overseas markets like Southeast Asia and Latin America, contrasting with a slowing domestic Chinese credit market. Using Q1 2026 financial data, it highlights their significant growth. Sea's Monee reached a loan balance of $99 billion, up 71% year-over-year (YoY), contributing 17.5% to Sea's total revenue. Mercado Pago's loan balance hit $146 billion, up 87% YoY, contributing 45% to its parent company's revenue. Both maintained stable risk metrics (e.g., Monee's 90+ day NPL at 1.1%) despite rapid scaling. Brazil is identified as a key and accelerating growth market for both. Sea's Brazilian operations saw loan volumes exceed $10 billion, growing 250% YoY, with SPayLater GMV penetration still low (~10%) indicating high potential. Sea also secured a key Brazilian financial credit license (SCFI). Mercado Libre's Brazil segment contributed over half (54%) of total group revenue, with its credit business there generating $11.24 billion in revenue, up 89% YoY and accounting for 12.7% of global revenue. Mercado Pago's credit portfolio, especially credit cards (46% of loans, +105% YoY), is a strategic focus, described as crucial as building logistics was a decade ago. Its net interest margin after loss (NIMAL) remains high at 17.8%. The article concludes that while Brazil presents immense opportunities, the success is largely driven by these integrated "e-commerce + fintech" giants with proprietary transaction data and ecosystems, making it challenging for standalone fintech players to compete effectively.

链捕手6m ago

Two Giants' Credit Expansion: Loan Balances of $9.9 Billion vs. $14.6 Billion, Brazil Emerges as the Main Battlefield

链捕手6m ago

Research Report Analysis: Is Intel Making a Comeback with Apple? Bernstein's Calculations Show the Right Direction, but the Price Is Already Overvalued

Bernstein analyst Stacy A. Rasgon published a report on June 18 regarding Intel, assessing the potential impact of recent political support for a US-based PC chip design and manufacturing collaboration between Apple and Intel. The report views this as a significant signal for the foundry landscape shift but concludes the initial financial contribution would be minimal. Key conclusions: 1) An Apple deal is seen as a small-scale "proof of concept." Even if Intel wins 40% of Apple's premium notebook chip orders (~5 million units/year), Bernstein estimates it would generate only about $500M in annual revenue and ~$0.03 EPS, negligible against Intel's ~$55B revenue. 2) Political encouragement is not equivalent to enforceable mandates. Winning orders ultimately depends on Intel demonstrating competitive technology (like its 18A node), cost, and reliable supply. 3) The path from validation to large-scale production involves significant challenges, capital investment, and time. Due to these uncertainties, Bernstein maintains a Market-Perform (Hold) rating with a $100 price target, implying potential downside from the ~$121.10 price at the report date. The analysis highlights the tension between near-term validation value—serving as a crucial trust signal for Intel's foundry ambitions and US supply chain resilience—and the long-term opportunity to attract larger cloud and AI chip customers. The investment thesis hinges on successful 18A execution and sustained policy support, not on immediate financial gains from Apple.

marsbit30m ago

Research Report Analysis: Is Intel Making a Comeback with Apple? Bernstein's Calculations Show the Right Direction, but the Price Is Already Overvalued

marsbit30m ago

27-Year Reign Ends: SK Hynix Market Cap Surpasses Samsung for First Time, an AI-Driven Reshuffle of Korean Chip Power

On June 22, 2026, SK Hynix made history by surpassing Samsung Electronics in market capitalization, ending Samsung's 27-year reign as South Korea's most valuable company. This dramatic reversal is powered by the AI boom and SK Hynix's dominant position in High Bandwidth Memory (HBM), a critical component for AI model training. Once a heavily indebted firm on the brink of bankruptcy, SK Hynix bet early on HBM, which has evolved from a niche product to essential AI infrastructure. It now commands a 59% share of the global HBM market. Its financial performance is staggering, with Q1 2026 net profit soaring nearly fourfold year-over-year to KRW 40.35 trillion, translating to over 2 billion RMB in daily net profit. HBM now drives roughly 40% of its revenue with exceptionally high margins. In contrast, Samsung, with its broad portfolio spanning memory chips, smartphones, and foundry services, has lagged in the HBM race while facing headwinds in other divisions. This shift signifies a deeper restructuring of South Korea's economy, moving from consumer electronics to AI-driven growth. However, the future remains competitive. With major capacity expansions planned industry-wide by 2028 and Samsung aiming to catch up in HBM technology, the new market leader cannot afford complacency. This event marks a pivotal moment in the global semiconductor industry's ongoing power realignment.

marsbit41m ago

27-Year Reign Ends: SK Hynix Market Cap Surpasses Samsung for First Time, an AI-Driven Reshuffle of Korean Chip Power

marsbit41m ago

Trading

Spot
Futures

Hot Articles

What is ₿O₿

Bitcoin Bob ($₿o₿): Pioneering Bitcoin-Centric DeFi Through Hybrid Layer-2 Innovation In an era where the digital economy is rapidly evolving, Bitcoin Bob ($₿o₿) emerges as a revolutionary project aiming to enhance Bitcoin's utility in the decentralized finance (DeFi) sector. Officially launched in May 2024, Bitcoin Bob, also known as Build on Bitcoin (BOB), represents a hybrid Layer-2 blockchain solution that melds Bitcoin’s renowned security and immutability with Ethereum's programmability. This initiative seeks to fill a crucial gap in the Bitcoin ecosystem by facilitating the integration of smart contracts and decentralized applications while maintaining the core principles of trust and security inherent to Bitcoin. With significant backing from prominent venture capitalists, Bitcoin Bob is positioned to redefine the role of Bitcoin in the DeFi landscape, making it a cornerstone of decentralized financial operations globally. What Is Bitcoin Bob, $₿o₿? At its core, Bitcoin Bob is a hybrid blockchain solution designed to enhance the functionality of Bitcoin. The main objective of the project is to enable decentralized finance on Bitcoin, facilitating swift and seamless transactions while ensuring high levels of security. Bitcoin Bob employs advanced technology, specifically a hybrid layer-2 architecture that combines Bitcoin's security attributes with the programmability and flexibility of the Ethereum Virtual Machine (EVM). This pragmatic approach allows the project to operate effectively without compromising the fundamental values of Bitcoin, making it a monumental step in bridging the gap between traditional Bitcoin holders and the emerging DeFi ecosystem. One of the standout features of Bitcoin Bob is its role in providing a trust-minimized environment through innovative mechanisms, such as optimistic rollups initially relying on Ethereum, transitioning eventually to full Bitcoin integration. This hybrid system is designed to ensure that the vast liquidity present in Bitcoin is not only preserved but also utilized effectively in various DeFi protocols. Who Is the Creator of Bitcoin Bob, $₿o₿? The creative force behind Bitcoin Bob is co-founder and CEO Alexei Zamyatin, who brings a wealth of experience and knowledge from his extensive background in the cryptocurrency space. Zamyatin holds a PhD in Computer Science and has been actively involved in Bitcoin development since 2015. His deep understanding of both Bitcoin and Ethereum ecosystems plays a crucial role in shaping Bitcoin Bob’s vision and technological underpinnings. Alongside Zamyatin is co-founder Dominik Harz, who serves as the Chief Technology Officer (CTO). Together, the duo has cultivated a team of talented individuals with a shared passion for pushing the boundaries of blockchain technology, ensuring Bitcoin Bob's innovative stature in the market. Who Are the Investors of Bitcoin Bob, $₿o₿? Bitcoin Bob has successfully garnered support from a range of prominent investors and venture capital firms that recognize its potential to transform the Bitcoin landscape. In March 2024, the project completed a robust $10 million seed funding round, led by Castle Island Ventures, with notable participation from firms like Coinbase Ventures and Bankless Ventures. Shortly afterward, in July 2024, Bitcoin Bob secured an additional $1.6 million in strategic funding. This round was co-led by Ledger Ventures and featured angels from various prominent firms such as BlackRock, Aave, and Curve. The strong financial backing reflects an industry-wide recognition of Bitcoin Bob’s innovative approach to unlocking Bitcoin’s potential in the DeFi space. This funding is crucial not only for the project’s continued development but also for establishing an incubator to foster Bitcoin-native decentralized applications (dApps) aimed specifically at meeting the needs of a growing user base. How Does Bitcoin Bob, $₿o₿ Work? The operational mechanics of Bitcoin Bob are rooted in its hybrid rollup architecture, which is designed to combine the benefits of Bitcoin's security with the versatility of Ethereum’s EVM. The project employs a phased security model that outlines its interaction with users and developers in the following manner: Phase 1 – The initial phase operates as an optimistic rollup on Ethereum, wherein transactions are processed with a promising expectation of validity, paving the way for future developments on Bitcoin. Phase 2 – As the project transitions, it will integrate Bitcoin finality through Bitcoin Staking, leveraging the Babylon Network to enhance security. This mechanism requires validators to lock up Bitcoin, thus verifying BOB transactions, which not only enhances security but also creates yield prospects for participants. Phase 3 – The forward-looking vision for Bitcoin Bob is to fully integrate with Bitcoin, using innovative technologies such as BitVM and zero-knowledge proofs to facilitate off-chain computation while retaining the security integrity of Bitcoin. Key innovations such as BitVM2, a trust-minimized bridge protocol co-authored by Zamyatin, are critical to the project's functionality, allowing for Bitcoin deposits and withdrawals without the need for extensive network reliance. This enables the ecosystem to efficiently connect with Ethereum and other compatible chains, creating a streamlined and effective interaction model for users and developers. Timeline of Bitcoin Bob, $₿o₿ Understanding the evolution of Bitcoin Bob involves tracking its important milestones: 2019: Alexei Zamyatin and Dominik Harz establish a research firm focused on blockchain solutions, laying the groundwork for future projects. March 2024: Bitcoin Bob successfully raises $10 million in a seed funding round, marking its entrance into the competitive blockchain landscape. May 1, 2024: The official mainnet launch occurs, showcasing the project’s capabilities with significant user adoption and total value locked (TVL). July 2024: The project attracts an additional $1.6 million in strategic funding for establishing its incubator, aimed at fostering Bitcoin-driven innovations. October 2024: Bitcoin Bob releases a “Vision Paper,” detailing its hybrid layer-2 design and forward-looking strategies. 2025: Expected rollout of Phase 2 features, focusing on Bitcoin finality and BitVM bridges aimed at enhancing overall functionality. Conclusion: Redefining Bitcoin’s Role in Decentralized Finance Bitcoin Bob ($₿o₿) is not just another blockchain project; it represents a paradigm shift in the way Bitcoin can interact with broader financial applications. By meticulously combining Bitcoin's security with Ethereum's flexibility, Bitcoin Bob aims to reshape the DeFi landscape, bridging the gap between digital currency and decentralized applications. With a robust technological framework, strong leadership, and strategic funding, Bitcoin Bob is well-positioned to establish itself as a fundamental player in the cryptocurrency ecosystem, unlocking new dimensions of liquidity and utility for Bitcoin. As the project continues to evolve and expand, it promises to usher in a new era of innovation, proving that Bitcoin's potential extends far beyond being a mere store of value, but rather as a cornerstone of the future financial landscape. As the project advances through its anticipated phases, all eyes will be on Bitcoin Bob, particularly regarding its commitment to incorporating decentralized principles and ensuring that users can enjoy the full benefits of DeFi anchored by Bitcoin.

225 Total ViewsPublished 2025.06.30Updated 2025.06.30

What is ₿O₿

How to Buy O

Welcome to HTX.com! We've made purchasing O1 exchange (O) simple and convenient. Follow our step-by-step guide to embark on your crypto journey.Step 1: Create Your HTX AccountUse your email or phone number to sign up for a free account on HTX. Experience a hassle-free registration journey and unlock all features.Get My AccountStep 2: Go to Buy Crypto and Choose Your Payment MethodCredit/Debit Card: Use your Visa or Mastercard to buy O1 exchange (O) instantly.Balance: Use funds from your HTX account balance to trade seamlessly.Third Parties: We've added popular payment methods such as Google Pay and Apple Pay to enhance convenience.P2P: Trade directly with other users on HTX.Over-the-Counter (OTC): We offer tailor-made services and competitive exchange rates for traders.Step 3: Store Your O1 exchange (O)After purchasing your O1 exchange (O), store it in your HTX account. Alternatively, you can send it elsewhere via blockchain transfer or use it to trade other cryptocurrencies.Step 4: Trade O1 exchange (O)Easily trade O1 exchange (O) on HTX's spot market. Simply access your account, select your trading pair, execute your trades, and monitor in real-time. We offer a user-friendly experience for both beginners and seasoned traders.

233 Total ViewsPublished 2026.06.19Updated 2026.06.19

How to Buy O

Discussions

Welcome to the HTX Community. Here, you can stay informed about the latest platform developments and gain access to professional market insights. Users' opinions on the price of O (O) are presented below.

活动图片