Feb. 5, 2024, 6:47 a.m. | Luca Morreale Noam Aigerman Vladimir G. Kim Niloy J. Mitra

cs.CV updates on arXiv.org arxiv.org

We present an automated technique for computing a map between two genus-zero shapes, which matches semantically corresponding regions to one another. Lack of annotated data prohibits direct inference of 3D semantic priors; instead, current State-of-the-art methods predominantly optimize geometric properties or require varying amounts of manual annotation. To overcome the lack of annotated training data, we distill semantic matches from pre-trained vision models: our method renders the pair of 3D shapes from multiple viewpoints; the resulting renders are then fed …

annotated data annotation art automated computing cs.cv cs.gr current data inference map maps semantic state surface training training data

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