CorelDraw Rozszerzony Training Course
During the 3-day training, participants will learn some history of the theory and guidelines transformed into sample projects:
"Tracing" from a drawing on paper to a vector image that can be used for printing, cutting, engraving, etc.
"Pierre Bézier Curves" rules for creating basic curves and compound curves as well as editing and repairing.
"Typography" creating your own font from drawing to obtaining an open type font (OTF) file.
This course is available as onsite live training in Switzerland or online live training.Course Outline
Routing:
preparing raster graphics for tracing
setting parameters for routing
choosing a method
thresholding
corners
number of paths, anchors and colors
Bezier curves:
creating a clock rule,
modification
removal
checkpoints
addition
removal
changing point and curve type
connecting points
disconnecting points
change of curve direction
creating and modifying a composite curve
Fixing Bad Curves
Fonts:
Font types and problems
standards of characters placed in fonts
repair or add missing characters in a font
installation in the operating system
rules of interaction of signs
using curves to create fonts
Projects:
understanding the guidelines
document preparation from design to device
document validation
Questions:
possibilities and limitations of the program
possibilities and limitations of vector formats
solving problems from everyday work
Open Training Courses require 5+ participants.
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