Analysis and Prediction of Deforming 3D Shapes using Oriented Bounding Boxes and LSTM Autoencoders
Sara Hahner, Rodrigo Iza-Teran, Jochen Garcke

TL;DR
This paper introduces a method combining oriented bounding boxes and LSTM autoencoders to analyze and predict complex 3D shape deformations over time, demonstrated on car crash simulations.
Contribution
It presents a novel approach integrating bounding boxes with LSTM autoencoders for deformation analysis and prediction of complex 3D shapes.
Findings
Effective detection of deformation patterns in 3D shapes.
Accurate prediction of future shape deformations.
Improved prediction quality over baseline methods.
Abstract
For sequences of complex 3D shapes in time we present a general approach to detect patterns for their analysis and to predict the deformation by making use of structural components of the complex shape. We incorporate long short-term memory (LSTM) layers into an autoencoder to create low dimensional representations that allow the detection of patterns in the data and additionally detect the temporal dynamics in the deformation behavior. This is achieved with two decoders, one for reconstruction and one for prediction of future time steps of the sequence. In a preprocessing step the components of the studied object are converted to oriented bounding boxes which capture the impact of plastic deformation and allow reducing the dimensionality of the data describing the structure. The architecture is tested on the results of 196 car crash simulations of a model with 133 different components,…
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