Topic: shapenet Goto Github
Some thing interesting about shapenet
Some thing interesting about shapenet
shapenet,A new method to preprocess ShapeNet to get minimal shift 3D ground truth; 3 Stage single-view 3D reconstruction method; Point cloud surface reconstruction without input normals.
User: alexsasexie
shapenet,PyTorch implementation to train MortonNet and use it to compute point features. MortonNet is trained in a self-supervised fashion, and the features can be used for general tasks like part or semantic segmentation of point clouds.
User: alitabet
Home Page: https://www.alithabet.com/mortonnet
shapenet,CompoNET: geometric deep learning approach in architecture. From a single-image generates a building with all its components
Organization: cdinstitute
Home Page: https://cdinstitute.github.io/CompoNET/
shapenet,Source code for: Flex-Convolution (Million-Scale Point-Cloud Learning Beyond Grid-Worlds), accepted at ACCV 2018
Organization: cgtuebingen
shapenet,Given an image and a target viewpoint, generate synthetic image in the target viewpoint
User: chinmay26
shapenet,Official GitHub repo for VecKM. A very efficient and descriptive local geometry encoder / point tokenizer / patch embedder. ICML2024.
User: dhyuan99
Home Page: http://arxiv.org/abs/2404.01568
shapenet,Learning Graph-Convolutional Representations for Point Cloud Denoising (ECCV 2020)
User: diegovalsesia
shapenet,Graph-convolutional GAN for point cloud generation. Code from ICLR 2019 paper Learning Localized Generative Models for 3D Point Clouds via Graph Convolution
User: diegovalsesia
shapenet,Perturbation experiments on the latent capsules of 3D Point Capsule Networks by Zhao et al.
User: dilaragokay
shapenet,PVT: Point-Voxel Transformer for 3D Deep Learning
User: haochengwan
Home Page: https://arxiv.org/abs/2108.06076
shapenet,The official implementation of "Pix2Vox: Context-aware 3D Reconstruction from Single and Multi-view Images". (Xie et al., ICCV 2019)
User: hzxie
Home Page: https://haozhexie.com/project/pix2vox
shapenet,3D point cloud data augmentation
User: joycenerd
shapenet,Official implementation of GraphX-Convolution
User: justanhduc
Home Page: https://justanhduc.github.io/2019/09/29/GraphX-Convolution.html
shapenet,Data Generation: Data is a spherical projection of the 3-D meshes.
User: kryptixone
shapenet,A simple Python script to batch render objects from the ShapeNet dataset from a number of views using pyrender.
User: matija-speletic
shapenet,[NeurIPS 2019, Spotlight] Point-Voxel CNN for Efficient 3D Deep Learning
Organization: mit-han-lab
Home Page: https://pvcnn.mit.edu/
shapenet,Point-PlaneNet: Plane kernel based convolutional neural network for point clouds analysis
User: moeinp70
Home Page: https://www.sciencedirect.com/science/article/abs/pii/S1051200419301873
shapenet,Unsupervised Point Cloud Pose Canonicalization By Approximating the Plane/s of Symmetry
User: mzguntalan
shapenet,We evaluate our method on different datasets (including ShapeNet, CUB-200-2011, and Pascal3D+) and achieve state-of-the-art results, outperforming all the other supervised and unsupervised methods and 3D representations, all in terms of performance, accuracy, and training time.
User: nikolazubic
shapenet,Pytorch Implementation of "Unsupervised Learning of Shape and Pose with Differentiable Point Clouds". ShapeNet->CNN->PointCloud->Differentiable Rendering->Backprop
User: niteshbharadwaj
shapenet,ShapeGlot: Learning Language for Shape Differentiation
User: optas
Home Page: https://ai.stanford.edu/~optas/shapeglot
shapenet,PRIN/SPRIN: On Extracting Point-wise Rotation Invariant Features
User: qq456cvb
shapenet,Point Cloud Segmentation Using PointNet
User: reshalfahsi
Home Page: https://reshalfahsi.github.io/point-cloud-segmentation/
shapenet,A Two-Phase Training Approach To Boost NeRF Reconstruction Speed
User: sayhitosandy
shapenet,PyTorch implementation of 3DQD with modifications (Deep Learning Lab - Uni Freiburg)
User: sohambasu07
shapenet,Pixel2Mesh++: Multi-View 3D Mesh Generation via Deformation. In ICCV2019.
User: walsvid
Home Page: https://arxiv.org/abs/1908.01491
shapenet,Python module to read and write .binvox files, Contributions come from dimatura/binvox-rw-py. Fixed some bugs and packaged them into installable Python packagesใ
User: wangqiang9
shapenet,Torch Implementation of NIPS'16 paper: Perspective Transformer Nets
User: xcyan
shapenet,(latest updates and bug fixed) DISN: Deep Implicit Surface Network for High-quality Single-view 3D Reconstruction
User: xharlie
shapenet,PointCNN: Convolution On X-Transformed Points (NeurIPS 2018)
User: yangyanli
Home Page: https://arxiv.org/abs/1801.07791
shapenet,PointNet and PointNet++ implemented by pytorch (pure python) and on ModelNet, ShapeNet and S3DIS.
User: yanx27
shapenet,code for "Neural Cages for Detail-Preserving 3D Deformations"
User: yifita
shapenet,Rendering color and depth images for ShapeNet models.
User: yinyunie
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