AI RESEARCH
Attention-guided reference point shifting for Gaussian-mixture-based partial point set registration
arXiv CS.CV
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ArXi:2512.02496v2 Announce Type: replace This study investigates the impact of the invariance of feature vectors for partial-to-partial point set registration under translation and rotation of input point sets, particularly in the realm of techniques based on deep learning and Gaussian mixture models (GMMs). We reveal both theoretical and practical problems associated with such deep-learning-based registration methods using GMMs, with a particular focus on the limitations of DeepGMR, a pioneering study in this line, to the partial-to-partial point set registration.