3260 papers • 126 benchmarks • 313 datasets
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These leaderboards are used to track progress in point-cloud-completion-11
Use these libraries to find point-cloud-completion-11 models and implementations
A new neural architecture to learn the conditional probability of an output sequence with elements that are discrete tokens corresponding to positions in an input sequence using a recently proposed mechanism of neural attention, called Ptr-Nets, which improves over sequence-to-sequence with input attention, but also allows it to generalize to variable size output dictionaries.
This work proposes a novel stepwise point cloud completion network (SPCNet) for various 3D models with large missings and newly design a cycle loss to enhance the generalization and robustness of SPCNet.
The experiments show that PCN produces dense, complete point clouds with realistic structures in the missing regions on inputs with various levels of incompleteness and noise, including cars from LiDAR scans in the KITTI dataset.
This work develops a first approach that works directly on input point clouds, does not require paired training data, and hence can directly be applied to real scans for scan completion.
This work proposes a novel approach to complete the partial point cloud in two stages, which outperforms the existing methods in both the Earth Mover's Distance (EMD) and the Chamfer Distance (CD).
A Point Fractal Network (PF-Net), a novel learning-based approach for precise and high-fidelity point cloud completion that preserves the spatial arrangements of the incomplete point cloud and can figure out the detailed geometrical structure of the missing region(s) in the prediction.
An end-to-end neural network architecture that focuses on computing the missing geometry and merging the known input and the predicted point cloud that outperforms the state-of-the-art methods in point cloud completion is proposed.
SnowflakeNet with Snowflake Point Deconvolution (SPD) is proposed with skip-transformer in SPD to learn point splitting patterns which can fit local regions the best and outperform the state-of-the-art point cloud completion methods under widely used benchmarks.
Adding a benchmark result helps the community track progress.