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June 3, 20264 min readAutomatically fact-checking long, AI-generated research reports poses new challenges — including benchmarking.
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May 26, 20265 min read
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May 14, 202616 min read
Featured news
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VLDB 20262026Accurate optimizer statistics are fundamental to query and ML-prediction performance in modern database systems, yet maintaining them poses a significant challenge for large-scale data warehouses. Traditional statistics collection relies on full table scans, which become prohibitively expensive as tables grow to billions of rows and beyond. This creates a critical tension: statistics must be kept current
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CVPR 2026 Workshop on Personalization in Generative AI2026Makeup transfer models enable fun augmented reality (AR) experiences as well as virtual try-on (VTO) for online makeup shopping. While recent state-of-the-art diffusion-based solutions such as Stable-Makeup [45] dramatically improve the accuracy and realism of makeup transfer, they still face limitations in identity and skin color preservation, making production-level VTO for makeup shopping unrealistic
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2026Inferring rigid-body physical states and properties from monocular videos is a fundamental step toward physicsbased perception and simulation. Existing approaches assume specific underlying physical systems, object types, and camera poses, which are unable to generalize to complex real-world settings. We introduce ∆YNAMICS, a visionlanguage framework that uses language as a unified representation of rigid-body
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CVPR 2026 Workshop on Fine-Grained Visual Categorization2026Fine-grained visual recognition demands attention to subtle, localized differences that current multimodal large language models (MLLMs) often overlook when guided by generic prompts. We propose APO-Pair, a prompt-optimization framework that learns classification rules by contrasting image pairs. A multimodal agent views these pairs, judges whether they depict the same fine-grained class, and iteratively
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CVPR 2026 Findings Track2026Complex image restoration aims to recover high-quality images from inputs affected by multiple degradations such as blur, noise, rain, and compression artifacts. Recent restoration agents, powered by vision-language models and large language models, offer promising restoration capabilities but suffer from significant efficiency bottlenecks due to reflection, rollback, and iterative tool searching. Moreover
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