Flat2Layout: Flat Representation for Estimating Layout of General Room Types

29 May 2019Chi-Wei HsiaoCheng SunMin SunHwann-Tzong Chen

This paper proposes a new approach, Flat2Layout, for estimating general indoor room layout from a single-view RGB image whereas existing methods can only produce layout topologies captured from the box-shaped room. The proposed flat representation encodes the layout information into row vectors which are treated as the training target of the deep model... (read more)

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