首页> 外国专利> PERFORMING SEMANTIC SEGMENTATION OF FORM IMAGES USING DEEP LEARNING

PERFORMING SEMANTIC SEGMENTATION OF FORM IMAGES USING DEEP LEARNING

机译:使用深度学习对表单图像进行语义分割

摘要

The present disclosure relates to generating fillable digital forms corresponding to paper forms using a form conversion neural network to determine low-level and high-level semantic characteristics of the paper forms. For example, one or more embodiments applies a digitized paper form to an encoder that outputs feature maps to a reconstruction decoder, a low-level semantic decoder, and one or more high-level semantic decoders. The reconstruction decoder generates a reconstructed layout of the digitized paper form. The low-level and high-level semantic decoders determine low-level and high-level semantic characteristics of each pixel of the digitized paper form, which provide a probability of the element type to which the pixel belongs. The semantic decoders then classify each pixel and generate corresponding semantic segmentation maps based on those probabilities. The system then generates a fillable digital form using the reconstructed layout and the semantic segmentation maps.
机译:本公开涉及使用表单转换神经网络来生成与纸张表单相对应的可填充数字表单,以确定纸张表单的低级和高级语义特征。例如,一个或多个实施例将数字化纸质表格应用于编码器,该编码器将特征图输出到重建解码器,低级语义解码器和一个或多个高级语义解码器。重构解码器生成数字化纸质表格的重构布局。低级和高级语义解码器确定数字化纸质表格的每个像素的低级和高级语义特征,这提供了像素所属元素类型的概率。然后,语义解码器对每个像素进行分类,并根据这些概率生成相应的语义分割图。然后,系统使用重构的布局和语义分割图生成可填写的数字表格。

著录项

  • 公开/公告号US2019294661A1

    专利类型

  • 公开/公告日2019-09-26

    原文格式PDF

  • 申请/专利权人 ADOBE INC.;

    申请/专利号US201815927686

  • 发明设计人 MAUSOOM SARKAR;

    申请日2018-03-21

  • 分类号G06F17/24;G06F17/27;G06N3/08;G06T7/10;

  • 国家 US

  • 入库时间 2022-08-21 12:10:24

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