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Shape Completion using 3D-Encoder-Predictor CNNs and Shape Synthesis

About

We introduce a data-driven approach to complete partial 3D shapes through a combination of volumetric deep neural networks and 3D shape synthesis. From a partially-scanned input shape, our method first infers a low-resolution -- but complete -- output. To this end, we introduce a 3D-Encoder-Predictor Network (3D-EPN) which is composed of 3D convolutional layers. The network is trained to predict and fill in missing data, and operates on an implicit surface representation that encodes both known and unknown space. This allows us to predict global structure in unknown areas at high accuracy. We then correlate these intermediary results with 3D geometry from a shape database at test time. In a final pass, we propose a patch-based 3D shape synthesis method that imposes the 3D geometry from these retrieved shapes as constraints on the coarsely-completed mesh. This synthesis process enables us to reconstruct fine-scale detail and generate high-resolution output while respecting the global mesh structure obtained by the 3D-EPN. Although our 3D-EPN outperforms state-of-the-art completion method, the main contribution in our work lies in the combination of a data-driven shape predictor and analytic 3D shape synthesis. In our results, we show extensive evaluations on a newly-introduced shape completion benchmark for both real-world and synthetic data.

Angela Dai, Charles Ruizhongtai Qi, Matthias Nie{\ss}ner• 2016

Related benchmarks

TaskDatasetResultRank
Point Cloud CompletionShapeNet seen categories
Airplane Error0.0132
32
Point Cloud CompletionShapeNet (test)--
20
Point Cloud CompletionShapeNet v1 (unseen categories)
Mean EMD (Bus)0.0359
12
Point Cloud CompletionShapeNet Part Chair
EMD (per point)0.0768
6
Point Cloud CompletionShapeNet Part Airplane
EMD (per point)0.062
6
Showing 5 of 5 rows

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