Motivated by the recent potential of mass customization brought by whole-garment knitting machines, we introduce the new problem of automatic machine instruction generation using a single image of the desired physical product, which we apply to machine knitting. We propose to tackle this problem by directly learning to synthesize regular machine instructions from real images. We create a cured dataset of real samples with their instruction counterpart and propose to use synthetic images to augment it in a novel way. We theoretically motivate our data mixing framework and show empirical results suggesting that making real images look more synthetic is beneficial in our problem setup.
Alexandre Kaspar (MIT CSAIL)
PhD student at MIT CSAIL working on modeling tools for digital fabrication including 3D printing and industrial machine knitting.
Tae-Hyun Oh (MIT CSAIL)
Liane Makatura (MIT)
Petr Kellnhofer (MIT)
Wojciech Matusik (MIT)
Related Events (a corresponding poster, oral, or spotlight)
2019 Oral: Neural Inverse Knitting: From Images to Manufacturing Instructions »
Wed Jun 12th 10:00 -- 10:05 PM Room Seaside Ballroom
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