AI RESEARCH

Synthetic Dataset Generation for Partially Observed Indoor Objects

arXiv CS.CV

ArXi:2604.07010v1 Announce Type: new Learning-based methods for 3D scene reconstruction and object completion require large datasets containing partial scans paired with complete ground-truth geometry. However, acquiring such datasets using real-world scanning systems is costly and time-consuming, particularly when accurate ground truth for occluded regions is required. In this work, we present a virtual scanning framework implemented in Unity for generating realistic synthetic 3D scan datasets.