GENERATING SCALABLE FONTS UTILIZING MULTI-IMPLICIT NEURAL FONT REPRESENTATIONS

    公开(公告)号:US20230110114A1

    公开(公告)日:2023-04-13

    申请号:US17499611

    申请日:2021-10-12

    Applicant: Adobe Inc.

    Abstract: The present disclosure relates to systems, methods, and non-transitory computer-readable media for accurately and flexibly generating scalable fonts utilizing multi-implicit neural font representations. For instance, the disclosed systems combine deep learning with differentiable rasterization to generate a multi-implicit neural font representation of a glyph. For example, the disclosed systems utilize an implicit differentiable font neural network to determine a font style code for an input glyph as well as distance values for locations of the glyph to be rendered based on a glyph label and the font style code. Further, the disclosed systems rasterize the distance values utilizing a differentiable rasterization model and combines the rasterized distance values to generate a permutation-invariant version of the glyph corresponding glyph set.

    Generating scalable fonts utilizing multi-implicit neural font representations

    公开(公告)号:US11875435B2

    公开(公告)日:2024-01-16

    申请号:US17499611

    申请日:2021-10-12

    Applicant: Adobe Inc.

    CPC classification number: G06T11/203 G06T3/40

    Abstract: The present disclosure relates to systems, methods, and non-transitory computer-readable media for accurately and flexibly generating scalable fonts utilizing multi-implicit neural font representations. For instance, the disclosed systems combine deep learning with differentiable rasterization to generate a multi-implicit neural font representation of a glyph. For example, the disclosed systems utilize an implicit differentiable font neural network to determine a font style code for an input glyph as well as distance values for locations of the glyph to be rendered based on a glyph label and the font style code. Further, the disclosed systems rasterize the distance values utilizing a differentiable rasterization model and combines the rasterized distance values to generate a permutation-invariant version of the glyph corresponding glyph set.

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