Embedding-Driven Data Distillation for 360-Degree IQA With Residual-Aware Refinement

arXiv — cs.CVTuesday, December 23, 2025 at 5:00:00 AM
  • A novel framework has been introduced for 360-degree image quality assessment (IQA), addressing the critical issue of sample-level data selection. This framework employs an embedding similarity-based selection algorithm that refines an initial set of image patches into a more informative subset, enhancing the efficiency of model training. Extensive experiments on benchmark datasets demonstrate its effectiveness in maintaining or exceeding performance while reducing the number of patches used.
  • This development is significant as it optimizes the data-driven approach to image quality assessment, potentially leading to more efficient and accurate models in various applications, including computer vision and image processing. By refining the data selection process, the framework can significantly reduce computational costs and improve model performance, making it a valuable tool for researchers and practitioners in the field.
  • The introduction of this framework aligns with ongoing efforts in artificial intelligence to enhance data efficiency and model accuracy. Similar advancements in related areas, such as video diffusion models and image anomaly detection, emphasize the importance of intelligent data handling and processing techniques. As the field progresses, the integration of innovative methods like embedding-driven data distillation may play a crucial role in addressing common challenges in AI, including overgeneralization and exposure bias.
— via World Pulse Now AI Editorial System

Was this article worth reading? Share it

Recommended apps based on your readingExplore all apps
Continue Readings
Attention Projection Mixing and Exogenous Anchors
NeutralArtificial Intelligence
A new study introduces ExoFormer, a transformer model that utilizes exogenous anchor projections to enhance attention mechanisms, addressing the challenge of balancing stability and computational efficiency in deep learning architectures. This model demonstrates improved performance metrics, including a notable increase in downstream accuracy and data efficiency compared to traditional internal-anchor transformers.
User-Oriented Multi-Turn Dialogue Generation with Tool Use at scale
NeutralArtificial Intelligence
A new framework for user-oriented multi-turn dialogue generation has been developed, leveraging large reasoning models (LRMs) to create dynamic, domain-specific tools for task completion. This approach addresses the limitations of existing datasets that rely on static toolsets, enhancing the interaction quality in human-agent collaborations.
Detecting Mental Manipulation in Speech via Synthetic Multi-Speaker Dialogue
NeutralArtificial Intelligence
A new study has introduced the SPEECHMENTALMANIP benchmark, marking the first exploration of mental manipulation detection in spoken dialogues, utilizing synthetic multi-speaker audio to enhance a text-based dataset. This research highlights the challenges of identifying manipulative speech tactics, revealing that models trained on audio exhibit lower recall compared to text.
RULERS: Locked Rubrics and Evidence-Anchored Scoring for Robust LLM Evaluation
PositiveArtificial Intelligence
The recent introduction of RULERS (Rubric Unification, Locking, and Evidence-anchored Robust Scoring) addresses challenges in evaluating large language models (LLMs) by transforming natural language rubrics into executable specifications, thereby enhancing the reliability of assessments.
Rescind: Countering Image Misconduct in Biomedical Publications with Vision-Language and State-Space Modeling
PositiveArtificial Intelligence
A new framework named Rescind has been introduced to combat image manipulation in biomedical publications, addressing the challenges of detecting forgeries that arise from domain-specific artifacts and complex textures. This framework combines vision-language prompting with state-space modeling to enhance the detection and generation of biomedical image forgeries.
Whose Facts Win? LLM Source Preferences under Knowledge Conflicts
NeutralArtificial Intelligence
A recent study examined the preferences of large language models (LLMs) in resolving knowledge conflicts, revealing a tendency to favor information from credible sources like government and newspaper outlets over social media. This research utilized a novel framework to analyze how these source preferences influence LLM outputs.
Predicting Region of Interest in Human Visual Search Based on Statistical Texture and Gabor Features
NeutralArtificial Intelligence
A recent study published on arXiv investigates the relationship between Gabor-based features and gray-level co-occurrence matrix (GLCM) texture features in modeling human visual search behavior. The research proposes two feature-combination pipelines to enhance predictions of human fixation regions using simulated digital breast tomosynthesis images.
Instance-Aligned Captions for Explainable Video Anomaly Detection
NeutralArtificial Intelligence
A new framework for explainable video anomaly detection (VAD) has been introduced, featuring instance-aligned captions that connect textual claims to specific object instances, enhancing the reliability of explanations in safety-critical applications. This approach addresses the limitations of existing methods that often produce incomplete or misaligned descriptions, particularly in scenarios involving multiple entities.

Ready to build your own newsroom?

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