From noisy point clouds to complete ear shapes: Unsupervised pipeline

Published:

F. Valdeira, R. Ferreira, A. Micheletti, and C. Soares, “From noisy point clouds to complete ear shapes: Unsupervised pipeline,” IEEE Access, vol. 9, pp. 127720–127734, Sep. 2021

Paper

Repository

Abstract

Ears are a particularly difficult region of the human face to model, not only due to the non-rigid deformations existing between shapes but also to the challenges in processing the retrieved data. The first step towards obtaining a good model is to have complete scans in correspondence, but these usually present a higher amount of occlusions, noise and outliers when compared to most face regions, thus requiring a specific procedure. Therefore, we propose a complete pipeline taking as input unordered 3D point clouds with the aforementioned problems, and producing as output a dataset in correspondence, with completion of the missing data. We provide a comparison of several state-of-the-art registration and shape completion methods, concluding on the best choice for each of the steps.