ANISE: Assembly-based Neural Implicit Surface rEconstruction
Dmitry Petrov, Matheus Gadelha, Radomir Mech, Evangelos Kalogerakis

TL;DR
ANISE introduces a novel assembly-based neural implicit shape reconstruction method that effectively reconstructs 3D shapes from partial data by modeling shapes as assemblies of parts, achieving state-of-the-art results.
Contribution
The paper proposes a part-aware neural implicit shape representation assembled from parts, with a coarse-to-fine prediction process, improving 3D reconstruction from partial observations.
Findings
Achieves state-of-the-art part-aware reconstruction from images and sparse point clouds.
Outperforms traditional shape retrieval methods with smaller databases.
Demonstrates superior results on standard sparse point cloud and single-view benchmarks.
Abstract
We present ANISE, a method that reconstructs a 3D~shape from partial observations (images or sparse point clouds) using a part-aware neural implicit shape representation. The shape is formulated as an assembly of neural implicit functions, each representing a different part instance. In contrast to previous approaches, the prediction of this representation proceeds in a coarse-to-fine manner. Our model first reconstructs a structural arrangement of the shape in the form of geometric transformations of its part instances. Conditioned on them, the model predicts part latent codes encoding their surface geometry. Reconstructions can be obtained in two ways: (i) by directly decoding the part latent codes to part implicit functions, then combining them into the final shape; or (ii) by using part latents to retrieve similar part instances in a part database and assembling them in a single…
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Taxonomy
TopicsManufacturing Process and Optimization · Robot Manipulation and Learning
