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A 3D mesh convolution-based autoencoder for geometry compression

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In this paper, we introduce a novel 3D mesh convolution-based autoencoder for geometry compression, able to deal with irregular mesh data without requiring neither preprocessing nor manifold/watertightness conditions. The proposed approach extracts meaningful latent representations by learning features directly from the mesh faces, while preserving connectivity through dedicated pooling and unpooling operations. The encoder compresses the input mesh into a compact base mesh space, which ensures that the latent space remains comparable. The decoder reconstructs the original connectivity and restores the compressed geometry to its full resolution. Extensive experiments on multi-class datasets demonstrate that our method outperforms state-of-the-art approaches in both 3D mesh geometry reconstruction and latent space classification tasks. Code available at: github.com/germainGB/MeshConv3D

Germain Bregeon, Marius Preda, Radu Ispas, Titus Zaharia• 2026

Related benchmarks

TaskDatasetResultRank
3D Mesh ReconstructionSHREC11 (test)
Chamfer Distance (CD)0.003
4
3D Mesh ReconstructionManifold40 (test)
Chamfer Distance (CD)0.004
4
Shape classificationManifold40 (test)
Accuracy898
4
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