Mode-Seeking for Inverse Problems with Diffusion Models

arXiv — cs.LGFriday, December 12, 2025 at 5:00:00 AM
  • A new study has introduced a variational mode-seeking loss (VML) that optimizes the use of pre-trained unconditional diffusion models for solving inverse problems without the need for task-specific training. This approach minimizes the Kullback-Leibler divergence between diffusion and measurement posteriors, enhancing the efficiency of the reverse diffusion process.
  • The development of VML is significant as it allows for more accurate and computationally efficient solutions to inverse problems, which are prevalent in fields such as image restoration and medical imaging. By eliminating the need for approximations, VML can streamline processes that traditionally require extensive computational resources.
  • This advancement reflects a broader trend in artificial intelligence towards improving model efficiency and adaptability. Techniques such as Guided Transfer Learning and various neural network approaches are also emerging to enhance performance across diverse applications, indicating a growing emphasis on robust and efficient AI solutions in complex problem-solving scenarios.
— via World Pulse Now AI Editorial System

Was this article worth reading? Share it

Recommended apps based on your readingExplore all apps
Continue Readings
Less is More: Data-Efficient Adaptation for Controllable Text-to-Video Generation
PositiveArtificial Intelligence
A new study introduces a data-efficient fine-tuning strategy for large-scale text-to-video diffusion models, enabling the addition of generative controls over physical camera parameters using sparse, low-quality synthetic data. This approach demonstrates that models fine-tuned on simpler data can outperform those trained on high-fidelity datasets.
Differential Smoothing Mitigates Sharpening and Improves LLM Reasoning
PositiveArtificial Intelligence
A recent study has introduced differential smoothing as a method to mitigate the diversity collapse often observed in large language models (LLMs) during reinforcement learning fine-tuning. This method aims to enhance both the correctness and diversity of model outputs, addressing a critical issue where outputs lack variety and can lead to diminished performance across tasks.
SplatCo: Structure-View Collaborative Gaussian Splatting for Detail-Preserving Rendering of Large-Scale Unbounded Scenes
NeutralArtificial Intelligence
SplatCo has been introduced as a novel structure-view collaborative Gaussian splatting framework designed for high-fidelity rendering of complex outdoor scenes. This framework integrates a cross-structure collaboration module, a cross-view pruning mechanism, and a structure view co-learning module to enhance detail preservation and rendering efficiency in large-scale unbounded scenes.
Exploring Automated Recognition of Instructional Activity and Discourse from Multimodal Classroom Data
PositiveArtificial Intelligence
A recent study explores the automated recognition of instructional activities and discourse from multimodal classroom data, utilizing AI-driven analysis of 164 hours of video and 68 lesson transcripts. This research aims to replace manual annotation methods, which are resource-intensive and difficult to scale, with more efficient AI techniques for actionable feedback to educators.
$\mathrm{D}^\mathrm{3}$-Predictor: Noise-Free Deterministic Diffusion for Dense Prediction
PositiveArtificial Intelligence
The introduction of the D³-Predictor presents a significant advancement in dense prediction by addressing the limitations of existing diffusion models, which are hindered by stochastic noise that disrupts fine-grained spatial cues and geometric structure mappings. This new framework reformulates a pretrained diffusion model to eliminate stochasticity, allowing for a more deterministic mapping from images to geometry.
Perception-Inspired Color Space Design for Photo White Balance Editing
PositiveArtificial Intelligence
A novel framework for white balance (WB) correction has been proposed, leveraging a perception-inspired Learnable HSI (LHSI) color space. This approach aims to address the limitations of traditional sRGB-based WB editing, which struggles with color constancy in complex lighting conditions due to fixed nonlinear transformations and entangled color channels.
Latent Action World Models for Control with Unlabeled Trajectories
PositiveArtificial Intelligence
A new study introduces latent-action world models that learn from both action-conditioned and action-free data, addressing the limitations of traditional models that rely heavily on labeled action trajectories. This approach allows for training on large-scale unlabeled trajectories while requiring only a small set of labeled actions.
An efficient probabilistic hardware architecture for diffusion-like models
PositiveArtificial Intelligence
A new study presents an efficient probabilistic hardware architecture designed for diffusion-like models, addressing the limitations of previous proposals that relied on unscalable hardware and limited modeling techniques. This architecture, based on an all-transistor probabilistic computer, is capable of implementing advanced denoising models at the hardware level, potentially achieving performance parity with GPUs while consuming significantly less energy.

Ready to build your own newsroom?

Subscribe to unlock a personalised feed, podcasts, newsletters, and notifications tailored to the topics you actually care about