Submitted:
04 April 2025
Posted:
05 April 2025
You are already at the latest version
Abstract
Keywords:
1. Introduction
1.1. Background
1.2. Research Questions
2. RQ1: Opportunities: Applications of Text-to-Image in Education
2.1. Creative Literacy and Visual Storytelling
2.2. Curriculum Development and Instructional Materials
2.3. STEM and Medical Applications
2.4. History and Social Sciences
2.5. Visual Arts and Design Education
2.6. Cross-Linguistic and Multilingual Education
2.7. Special Education and Accessibility
2.8. Informal Learning Environments (Afterschool or Home Education)
2.9. AI Literacy and Critical Thinking
3. RQ2: Challenges: Technical, Ethical, and Pedagogical Limitations
3.1. Technical Challenges and Limitations
3.1.1. Accuracy and Consistency
3.1.2. Prompt Engineering Skills
3.1.3. Resource Constraints
3.1.4. Safety and Content Filtering
3.1.5. Bias as a Technical Limitation
3.2. Ethical Concerns: Bias and Misinformation
3.2.1. Bias in Representation
3.2.2. Misinformation and Authenticity
3.2.3. Harmful or Sensitive Content
3.3. Data Privacy and Intellectual Property
3.3.1. Data Privacy
3.3.2. Intellectual Property (IP) Considerations
3.4. Pedagogical and Practical Challenges
3.4.1. Alignment with Learning Goals
3.4.2. Assessment and Academic Integrity
3.4.3. Classroom Management and Engagement
3.4.4. Teacher Professional Development
3.4.5. Curricular Relevance
4. RQ3: Student Perspectives on Text-to-Image AI
4.1. Heightened Engagement and Visual Discovery
4.2. Descriptive Language Development
4.3. Cultural Awareness and Global Perspective
4.4. Technological Literacy and Critical Evaluation
4.5. Challenges and Frustrations
4.6. Collaborative Learning and Peer Inspiration
4.7. Creativity and Imaginative Exploration
5. Conclusion
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