Litcius/Paper detail

Sketch2Pose

Kirill Brodt, Mikhail Bessmeltsev

2022ACM Transactions on Graphics22 citationsDOI

Abstract

Artists frequently capture character poses via raster sketches, then use these drawings as a reference while posing a 3D character in a specialized 3D software --- a time-consuming process, requiring specialized 3D training and mental effort. We tackle this challenge by proposing the first system for automatically inferring a 3D character pose from a single bitmap sketch, producing poses consistent with viewer expectations. Algorithmically interpreting bitmap sketches is challenging, as they contain significantly distorted proportions and foreshortening. We address this by predicting three key elements of a drawing, necessary to disambiguate the drawn poses: 2D bone tangents, self-contacts, and bone foreshortening. These elements are then leveraged in an optimization inferring the 3D character pose consistent with the artist's intent. Our optimization balances cues derived from artistic literature and perception research to compensate for distorted character proportions. We demonstrate a gallery of results on sketches of numerous styles. We validate our method via numerical evaluations, user studies, and comparisons to manually posed characters and previous work. Code and data for our paper are available at http://www-labs.iro.umontreal.ca/bmpix/sketch2pose/.

Topics & Concepts

BitmapComputer scienceCharacter (mathematics)SketchCode (set theory)Key (lock)Artificial intelligenceProcess (computing)Computer graphics (images)SoftwareComputer visionProgramming languageAlgorithmComputer securitySet (abstract data type)MathematicsGeometryHuman Motion and AnimationHuman Pose and Action Recognition3D Shape Modeling and Analysis