Seeing the Intangible: Survey of Image Classification into High-Level and Abstract Categories
arXiv cs.AI / 4/20/2026
💬 OpinionIdeas & Deep AnalysisModels & Research
Key Points
- The survey paper investigates how computer vision research is moving from low-level recognition toward high-level visual sensemaking, focusing on how abstract concepts are used in automatic image classification.
- It provides a multidisciplinary view of tacit high-level semantics, organizing abstract concepts into clusters such as commonsense, emotional, aesthetic, and inductive interpretative semantics.
- The authors map and categorize the kinds of CV tasks that relate to high-level visual understanding, helping clarify the landscape of this research area.
- It examines how values and ideologies—core elements of abstract concepts—are treated in CV, highlighting key challenges and opportunities for AC-based classification.
- The paper concludes that existing approaches face persistent issues like limited gains from massive datasets, and argues that integrating supplementary information and mid-level features, potentially via hybrid AI systems, is important for progress.
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