Graphic techniques (Adobe Photoshop, Corel Draw) Training Course
Learning Outcomes:
- Fundamentals of computer graphics and desktop publishing
- Methods for defining and manipulating color
- Distinctions between vector and bitmap graphics
- Techniques for adjusting color in photos and graphics
- Principles of photo retouching and photomontage creation
- Creating original illustrations and graphic elements
- Adapting to the requirements of graphic composition and printing workflows
- Designing logos and branding marks
- Designing engaging charts and tables
- Creating business cards and letterheads
- Producing labels, diplomas, and invitations
- Drafting leaflets and flyers
- Text formatting techniques
- Utilization of spot colors
- Principles of print preparation
- Overview of digital, offset, and screen printing processes
Sample Class Projects:
- Poster design
- Portrait retouching
- Landscape editing
- Catalog layout
- Facial retouching
- Billboard design
- Logo design
Course Outline
Photoshop:
- Fundamentals of digital image creation
- Photoshop Toolset
- Document sizing and resolution
- Selection tools and techniques
- Paths: Creation and editing
- Photo retouching methods
- Using the History Palette
- Working with Layers
- Transformation tools
- Color and tonal adjustments
- Practical examples of color correction
- Text tools and typography
- Printing workflows
- Saving and exporting files
CorelDRAW:
- Principles of vector graphics creation
- Vector shapes and paths
- Object transformations
- Color management
- Typography and text handling
- Creating tables and charts
- Filters and visual effects
- Manipulating bitmap graphics
- Preparing simple documents
- Printing processes
- Preparation for imposition
Acrobat:
- PostScript preview capabilities
- Editing PDF files
Requirements
Proficient computer skills.
Open Training Courses require 5+ participants.
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