Constraint-Based Spectral Space Template Deformation for Ear Scans

Srinivasan Ramachandran, T. Popa, Eric Paquette
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Abstract

Ears are complicated shapes and contain a lot of folds. It is difficult to correctly deform an ear template to achieve the same shape as a scan, while avoiding the reconstruction of noise from the scan and being robust to bad geometry found in the scan. We leverage the smoothness of the spectral space to help in the alignment of the semantic features of the ears. Edges detected in image space are used to identify relevant features from the ear that we align in the spectral representation by iteratively deforming the template ear. We then apply a novel reconstruction that preserves the deformation from the spectral space while reintroducing the original details. A final deformation based on constraints considering surface position and orientation deforms the template ear to match the shape of the scan. We tested our approach on many ear scans and observed that the resulting template shape provides a good compromise between complying with the shape of the scan and avoiding the reconstruction of the noise found in the scan. Furthermore, our approach was robust enough to scan meshes exhibiting typical bad geometry such as cracks and handles.
基于约束的谱空间模板耳扫描变形
耳朵形状复杂,有很多褶皱。正确变形耳模板以获得与扫描相同的形状是很困难的,同时避免了扫描噪声的重建,并且对扫描中发现的不良几何形状具有鲁棒性。我们利用光谱空间的平滑性来帮助耳朵的语义特征对齐。在图像空间中检测到的边缘通过迭代变形模板耳来识别我们在光谱表示中对齐的耳的相关特征。然后,我们应用了一种新的重建,在重新引入原始细节的同时保留了光谱空间的变形。基于考虑表面位置和方向约束的最终变形使模板耳变形以匹配扫描形状。我们在许多耳部扫描中测试了我们的方法,并观察到最终的模板形状在符合扫描形状和避免扫描中发现的噪声重建之间提供了一个很好的折衷。此外,我们的方法足够健壮,可以扫描出典型的不良几何形状,如裂缝和手柄。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
2.20
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