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Multiple View Performers for Shape Completion

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arxiv 2209.06291 v1 pith:4ZTWF7TF submitted 2022-09-13 cs.CV cs.RO

Multiple View Performers for Shape Completion

classification cs.CV cs.RO
keywords completionmultipleshapemodelviewfirsthistorymemory
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We propose the Multiple View Performer (MVP) - a new architecture for 3D shape completion from a series of temporally sequential views. MVP accomplishes this task by using linear-attention Transformers called Performers. Our model allows the current observation of the scene to attend to the previous ones for more accurate infilling. The history of past observations is compressed via the compact associative memory approximating modern continuous Hopfield memory, but crucially of size independent from the history length. We compare our model with several baselines for shape completion over time, demonstrating the generalization gains that MVP provides. To the best of our knowledge, MVP is the first multiple view voxel reconstruction method that does not require registration of multiple depth views and the first causal Transformer based model for 3D shape completion.

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