AI with Papers - Artificial Intelligence & Deep Learning
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All the AI with papers. Every day fresh updates about #DeepLearning, #MachineLearning, LLMs and #ComputerVision

Curated by Alessandro Ferrari | https://www.linkedin.com/in/visionarynet/

#artificialintelligence #machinelearning #ml #AI
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🚨 Announcement 🚨

I’ve received numerous reports of people blatantly copying my content on LinkedIn just to get a few likes.

Let me be very clear: I put a great deal of time and effort into reviewing papers and creating original, meaningful content. It’s disappointing to see professionals (some of whom are even members of this group or my connections) resorting to plagiarism instead of contributing their own ideas.

πŸ‘‰ Starting today, I’ll be removing these connections from LinkedIn and banning such individuals from this group.

πŸ“’ I also encourage everyone to report these cases whenever you come across them. Every single report helps stop this bad habit and keeps our community fair, respectful, and authentic.
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🟩 Foundational Humanoid 🟩

πŸ‘‰#NVIDIA unveils SONIC a novel foundational model for high-precision teleoperation & interactive control capabilities (running, jumping, crawling) with natural human-like movements. Code announcedπŸ’™

πŸ‘‰Review https://t.ly/_3wnt
πŸ‘‰Paper https://lnkd.in/dctfShu8
πŸ‘‰Project https://lnkd.in/d_inmA2p
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πŸ”₯Depth Anything 3 is outπŸ”₯

πŸ‘‰ByteDance unveils Depth Anything 3 (DA3), a model that predicts spatially consistent geometry from arbitrary visual inputs, with or without known camera poses. Repo under Apache 2.0πŸ’™

πŸ‘‰Review https://t.ly/AOPu7
πŸ‘‰Paper arxiv.org/pdf/2511.10647
πŸ‘‰Project https://lnkd.in/dnByyn2z
πŸ‘‰Repo https://lnkd.in/daCVz_4a
πŸ‘‰Demo https://lnkd.in/dKUZiJt
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🌩️ It's "Time-to-Move" 🌩️

πŸ‘‰Technion + Nvidia Time-to-Move (TTM) is a training-free, plug-and-play framework for motion- and appearance-controlled video generation with I2V diffusion models (Wan 2.2, CogVideoX, & Stable VD). Impressive results!

πŸ‘‰Review https://t.ly/0pwXm
πŸ‘‰Paper https://lnkd.in/dxD3uHYb
πŸ‘‰Project https://lnkd.in/dcE5juyM
πŸ‘‰Repo https://lnkd.in/dMMUjybJ
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⌚ Multi-Shot Video Segmentation ⌚

πŸ‘‰Fudan focuses on an underexplored task of multi-shot video object segmentation (MVOS). Benchmark and repo available (the extension part of SAM) under Apache 2.0πŸ’™

πŸ‘‰Review https://t.ly/WBW00
πŸ‘‰Paper https://arxiv.org/pdf/2511.13715
πŸ‘‰Project https://henghuiding.com/SAAS/
πŸ‘‰Repo https://github.com/FudanCVL/SAAS
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πŸ”₯ SAM 3/3D are OUT!! πŸ”₯

πŸ‘‰#META released SAM 3, a unified model for detection, segmentation, tracking of objects in images & video using text, exemplar & visual prompts. Repo/Models under proprietary licenseπŸ’™

πŸ‘‰Review https://t.ly/lnRZN
πŸ‘‰Paper https://t.ly/5tq9N
πŸ‘‰Project https://ai.meta.com/sam3/
πŸ‘‰Demo: https://segment-anything.com
πŸ‘‰Repo https://github.com/facebookresearch/sam3
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🍯Unwrapping of 3D Meshes🍯

πŸ‘‰PartUV is a novel part-based UV unwrapping method for 3D meshes; it combines learned part priors with geometric cues to generate a compact set of part-aligned charts. Repo releasedπŸ’™

πŸ‘‰Review https://t.ly/8dNIY
πŸ‘‰Paper arxiv.org/pdf/2511.16659
πŸ‘‰Project www.zhaoningwang.com/PartUV/
πŸ‘‰Repo github.com/EricWang12/PartUV
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πŸ• Upsample Anything πŸ•

πŸ‘‰Upsample Anything, a novel universal, training-free up-sampler via lightweight test-time optimization. No code but it's a relevant paperπŸ’™

πŸ‘‰Review https://t.ly/7LE6G
πŸ‘‰Paper https://lnkd.in/dsUfdtih
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🦞Single Synthetic Image per Class🦞

πŸ‘‰MIT unveils Linear Gradient Matching (H/T Torralba), a novel method of distillation to use a single synthetic image per class for linear classifiers training (and more). Repo availableπŸ’™

πŸ‘‰Review https://t.ly/dD3un
πŸ‘‰Paper arxiv.org/pdf/2511.16674
πŸ‘‰Project linear-gradient-matching.github.io/
πŸ‘‰Repo github.com/GeorgeCazenavette/linear-gradient-matching
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πŸ§ͺ EfficientSAM3 is out πŸ§ͺ

πŸ‘‰Bristol announces EfficientSAM3, a family of efficient models built on Progressive Hierarchical Distillation that transfers capability from SAM3 to lightweight students. Code coming (in sync with SAM3 release)πŸ’™

πŸ‘‰Review https://t.ly/bfXP2
πŸ‘‰Paper arxiv.org/pdf/2511.15833
πŸ‘‰Project simonzeng7108.github.io/efficientsam3/
πŸ‘‰Repo github.com/SimonZeng7108/efficientsam3
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