Machine Recognition and Correction of Freehand Geometric Line Sketches
نویسندگان
چکیده
We propose scale independent geometric models to recognize and correct freehand geometric line sketches. The models are defined as compositions of a set of primitives that account for freehand drawing approximations. The recognized sketches are corrected to their precise geometric shapes.
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