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ð Graph Neural Nets Forecastingð
ðData-driven approach for forecasting global weather using graph neural networks
ððĒð ðĄðĨðĒð ðĄððŽ:
â Data-driven forecasting via GNNs
â Model: 6.7M parameters, float32
â 6-hours forecast in 0.04 secs.
â A 5-day forecast in 0.8 secs.
More: https://bit.ly/3LH4CXR
ðData-driven approach for forecasting global weather using graph neural networks
ððĒð ðĄðĨðĒð ðĄððŽ:
â Data-driven forecasting via GNNs
â Model: 6.7M parameters, float32
â 6-hours forecast in 0.04 secs.
â A 5-day forecast in 0.8 secs.
More: https://bit.ly/3LH4CXR
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ðĨŦWatch Those Words!ðĨŦ
ðBerkeley unveils a novel approach to discover cheap-fake and visually persuasive deep-fakes
ððĒð ðĄðĨðĒð ðĄððŽ:
â Regardless of falsification
â Semantic person-specific
â Word-conditioned analysis
â Generalization across fakes
More: https://bit.ly/3oXWmcd
ðBerkeley unveils a novel approach to discover cheap-fake and visually persuasive deep-fakes
ððĒð ðĄðĨðĒð ðĄððŽ:
â Regardless of falsification
â Semantic person-specific
â Word-conditioned analysis
â Generalization across fakes
More: https://bit.ly/3oXWmcd
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ðV2X-sim for #selfdriving is out!ð
ðV2X: collaboration between a vehicle and any surrounding entity
ððĒð ðĄðĨðĒð ðĄððŽ:
â Suitable for #selfdrivingcars
â Rec. from road & vehicles
â Multi-streams/perception
â Detection, tracking, & segmentation
â RGB, depth, semantic, BEV & LiDAR
More: https://bit.ly/3H6veOI
ðV2X: collaboration between a vehicle and any surrounding entity
ððĒð ðĄðĨðĒð ðĄððŽ:
â Suitable for #selfdrivingcars
â Rec. from road & vehicles
â Multi-streams/perception
â Detection, tracking, & segmentation
â RGB, depth, semantic, BEV & LiDAR
More: https://bit.ly/3H6veOI
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ðInfinite Synthetic dataset for Fitnessð
ðOpensource synthetic images for fitness, single/multi-person, and realistic variation in lighting, camera angles, and occlusions
ððĒð ðĄðĨðĒð ðĄððŽ:
â 60k images, 1-5 avatars
â 15 categories, 21 variations
â Blender and ray-tracing
â SMPL-X + facial expression
â Cloth/skin tone sampled
â 147 4K HDRI panoramas
â Creative Commons 4.0
More: https://bit.ly/33B1R9q
ðOpensource synthetic images for fitness, single/multi-person, and realistic variation in lighting, camera angles, and occlusions
ððĒð ðĄðĨðĒð ðĄððŽ:
â 60k images, 1-5 avatars
â 15 categories, 21 variations
â Blender and ray-tracing
â SMPL-X + facial expression
â Cloth/skin tone sampled
â 147 4K HDRI panoramas
â Creative Commons 4.0
More: https://bit.ly/33B1R9q
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â DITTO: Digital Twins from Interaction â
ðDigitizing objects for #metaverse through interactive perception
ððĒð ðĄðĨðĒð ðĄððŽ:
â DIgital Twin of arTiculated Objects
â Geometry & kinematic articulation
â Articulation & 3D via perception
â Source code under MIT License
More:https://bit.ly/3LMazCV
ðDigitizing objects for #metaverse through interactive perception
ððĒð ðĄðĨðĒð ðĄððŽ:
â DIgital Twin of arTiculated Objects
â Geometry & kinematic articulation
â Articulation & 3D via perception
â Source code under MIT License
More:https://bit.ly/3LMazCV
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ðĪ Robotic Telekinesis from Youtube ðĪ
ðCMU unveils a Robot that observes humans and imitates their actions in real-time
ððĒð ðĄðĨðĒð ðĄððŽ:
â Enabling robo-hand teleoperation
â Suitable for untrained operator
â Single uncalibrated RGB camera
â Leveraging unlabeled #youtube
â No active fine-tuning or setup
â No collision via Adv-Training
More: https://bit.ly/3H7zUnh
ðCMU unveils a Robot that observes humans and imitates their actions in real-time
ððĒð ðĄðĨðĒð ðĄððŽ:
â Enabling robo-hand teleoperation
â Suitable for untrained operator
â Single uncalibrated RGB camera
â Leveraging unlabeled #youtube
â No active fine-tuning or setup
â No collision via Adv-Training
More: https://bit.ly/3H7zUnh
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ðDIGAN: #AI for video generationð
ðA novel INR-based generative adversarial network for video generation
ððĒð ðĄðĨðĒð ðĄððŽ:
â Dynamics-aware generator
â INR-based clip generator
â Manipulating space/time
â Identifying unnatural motion
More: https://bit.ly/3H6sHE4
ðA novel INR-based generative adversarial network for video generation
ððĒð ðĄðĨðĒð ðĄððŽ:
â Dynamics-aware generator
â INR-based clip generator
â Manipulating space/time
â Identifying unnatural motion
More: https://bit.ly/3H6sHE4
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ðĶFILM Neural Frame InterpolationðĶ
ðFrame interpolation that synthesizes multiple intermediate frames from two input images with large in-between motion
ððĒð ðĄðĨðĒð ðĄððŽ:
â Single unified network
â High quality output
â SOTA on the Xiph
â Apache License 2.0
More: https://bit.ly/3pl4ZxH
ðFrame interpolation that synthesizes multiple intermediate frames from two input images with large in-between motion
ððĒð ðĄðĨðĒð ðĄððŽ:
â Single unified network
â High quality output
â SOTA on the Xiph
â Apache License 2.0
More: https://bit.ly/3pl4ZxH
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ðNeural Maintenance via listeningð
ðNovel neural-method to detect whether a machine is "healthy" or requires maintenance
ððĒð ðĄðĨðĒð ðĄððŽ:
â Defects at an early stage
â FDWT, fast discrete wavelet
â Learnable wavelet/denoising
â Unsupervised learnable FDWT
â The new SOTA in PM
More: https://bit.ly/3hiKWeX
ðNovel neural-method to detect whether a machine is "healthy" or requires maintenance
ððĒð ðĄðĨðĒð ðĄððŽ:
â Defects at an early stage
â FDWT, fast discrete wavelet
â Learnable wavelet/denoising
â Unsupervised learnable FDWT
â The new SOTA in PM
More: https://bit.ly/3hiKWeX
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ðĶðĻ StyleGAN on Internet pics ðĶðĻ
ðStyleGAN on raw uncurated images collected from Internet
ððĒð ðĄðĨðĒð ðĄððŽ:
â Outliers & multi-modal
â Self-distillation approach
â Self-filtering of outliers
â Perceptual clustering
More: https://bit.ly/33Z1d5H
ðStyleGAN on raw uncurated images collected from Internet
ððĒð ðĄðĨðĒð ðĄððŽ:
â Outliers & multi-modal
â Self-distillation approach
â Self-filtering of outliers
â Perceptual clustering
More: https://bit.ly/33Z1d5H
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ðĶThe new SOTA for Unsupervised ðĶ
ðSelf-supervised transformer to discover objects in images
ððĒð ðĄðĨðĒð ðĄððŽ:
â Visual tokens as nodes in graph
â Edges as connectivity score
â The second smallest eV = fg
â Suitable for unsupervised saliency
â Weakly supervised obj. detection
â Code under MIT License
More: https://bit.ly/3sqbFg3
ðSelf-supervised transformer to discover objects in images
ððĒð ðĄðĨðĒð ðĄððŽ:
â Visual tokens as nodes in graph
â Edges as connectivity score
â The second smallest eV = fg
â Suitable for unsupervised saliency
â Weakly supervised obj. detection
â Code under MIT License
More: https://bit.ly/3sqbFg3
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ðĨĶ GAN-generated CryptoPunks ðĨĶ
ðA simple (and funny) SN-GAN to generate cryptopunks
ððĒð ðĄðĨðĒð ðĄððŽ:
â Spectral normalization (2018)
â Easy to incorporate into training
â A project by Teddy Koker ðĐ
More: https://bit.ly/35C1rQI
ðA simple (and funny) SN-GAN to generate cryptopunks
ððĒð ðĄðĨðĒð ðĄððŽ:
â Spectral normalization (2018)
â Easy to incorporate into training
â A project by Teddy Koker ðĐ
More: https://bit.ly/35C1rQI
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ðĪŠSEER: self-AI from BILLIONS picðĪŠ
ðMETA + INRIA trained models on billions of random images without any pre-processing or assumptions
ððĒð ðĄðĨðĒð ðĄððŽ:
â Self-supervised on pics from web
â Discovering properties in datasets
â More fair, less biased & less harmful
â Better OOD generalization
â Source code available!
More: https://bit.ly/3vy69dd
ðMETA + INRIA trained models on billions of random images without any pre-processing or assumptions
ððĒð ðĄðĨðĒð ðĄððŽ:
â Self-supervised on pics from web
â Discovering properties in datasets
â More fair, less biased & less harmful
â Better OOD generalization
â Source code available!
More: https://bit.ly/3vy69dd
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ðēA novel AI-controllable synthesisðē
ðModeling local semantic parts separately and synthesizing images in a compositional way
ððĒð ðĄðĨðĒð ðĄððŽ:
â Structure & texture locally controlled
â Disentanglement between areas
â Fine-grained editing of images
â Extendible via transfer learning
â Just accepted to #CVPR2022
More: https://bit.ly/3IBgkBy
ðModeling local semantic parts separately and synthesizing images in a compositional way
ððĒð ðĄðĨðĒð ðĄððŽ:
â Structure & texture locally controlled
â Disentanglement between areas
â Fine-grained editing of images
â Extendible via transfer learning
â Just accepted to #CVPR2022
More: https://bit.ly/3IBgkBy
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ðĨĢ #AI-Generation with Dream Fields ðĨĢ
ðNeural rendering with multi-modal image and text representations
ððĒð ðĄðĨðĒð ðĄððŽ:
â Aligned image & text models
â 3D from natural language
â No additional data
â D.F. neural-scene
More: https://bit.ly/3Mhwm5D
ðNeural rendering with multi-modal image and text representations
ððĒð ðĄðĨðĒð ðĄððŽ:
â Aligned image & text models
â 3D from natural language
â No additional data
â D.F. neural-scene
More: https://bit.ly/3Mhwm5D
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ðŠ Mip-NeRF 360 for unbounded scenes ðŠ
ðAn extension of NeRF to overcome the challenges presented by unbounded scenes
ððĒð ðĄðĨðĒð ðĄððŽ:
â Realistic synthesized views
â Intricate/unbounded scenes
â Detailed depth maps
â Mean-squared error -54%
â No code provided ðĨ
More: https://bit.ly/36ZxsD4
ðAn extension of NeRF to overcome the challenges presented by unbounded scenes
ððĒð ðĄðĨðĒð ðĄððŽ:
â Realistic synthesized views
â Intricate/unbounded scenes
â Detailed depth maps
â Mean-squared error -54%
â No code provided ðĨ
More: https://bit.ly/36ZxsD4
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ð PINA: personal Neural Avatar ð
ðA novel method to acquire neural avatars from RGB-D videos
ððĒð ðĄðĨðĒð ðĄððŽ:
â A virtual copy of themselves
â Realistic clothing deformations
â Shape & non-rigid deformation
â Avatars from RGB-D sequences
â Creative Commons Zero v1.0
More: https://bit.ly/3HAtRIh
ðA novel method to acquire neural avatars from RGB-D videos
ððĒð ðĄðĨðĒð ðĄððŽ:
â A virtual copy of themselves
â Realistic clothing deformations
â Shape & non-rigid deformation
â Avatars from RGB-D sequences
â Creative Commons Zero v1.0
More: https://bit.ly/3HAtRIh
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ðĶ EfficientVIS: new SOTA for VIS ðĶ
ðSimultaneous classification, segmentation, and tracking multiple object instances in videos
ððĒð ðĄðĨðĒð ðĄððŽ:
â Efficient and fully end-to-end
â Iterative query-video interaction
â First RoI-wise clip-level RT-VIS
â Requires 15Ã fewer epochs
More: https://bit.ly/3KfqurN
ðSimultaneous classification, segmentation, and tracking multiple object instances in videos
ððĒð ðĄðĨðĒð ðĄððŽ:
â Efficient and fully end-to-end
â Iterative query-video interaction
â First RoI-wise clip-level RT-VIS
â Requires 15Ã fewer epochs
More: https://bit.ly/3KfqurN
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ð #AI-clips from single frameð
ðMoving objects in #3D while generating a video by a sequence of desired actions
ððĒð ðĄðĨðĒð ðĄððŽ:
â A playable environments
â A single starting imageðĪŊ
â Controllable camera
â Unsupervised learning
More: https://bit.ly/35VDrYO
ðMoving objects in #3D while generating a video by a sequence of desired actions
ððĒð ðĄðĨðĒð ðĄððŽ:
â A playable environments
â A single starting imageðĪŊ
â Controllable camera
â Unsupervised learning
More: https://bit.ly/35VDrYO
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ð§Kubric: AI dataset generatorð§
ðOpen-source #Python framework for photo-realistic scenes: full control, rich annotations, TBs of fresh data ðĪŊ
ððĒð ðĄðĨðĒð ðĄððŽ:
â Synthetic datasets with GT
â From NeRF to optical flow
â Full control over data
â Ok privacy & licensing
â Apache License 2.0
More: https://bit.ly/3hQCaFs
ðOpen-source #Python framework for photo-realistic scenes: full control, rich annotations, TBs of fresh data ðĪŊ
ððĒð ðĄðĨðĒð ðĄððŽ:
â Synthetic datasets with GT
â From NeRF to optical flow
â Full control over data
â Ok privacy & licensing
â Apache License 2.0
More: https://bit.ly/3hQCaFs
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