Seeing the Intangible: Survey of Image Classification into High-Level and Abstract Categories

arXiv cs.AI / 4/20/2026

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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.

Abstract

The field of Computer Vision (CV) is increasingly shifting towards ``high-level'' visual sensemaking tasks, yet the exact nature of these tasks remains unclear and tacit. This survey paper addresses this ambiguity by systematically reviewing research on high-level visual understanding, focusing particularly on Abstract Concepts (ACs) in automatic image classification. Our survey contributes in three main ways: Firstly, it clarifies the tacit understanding of high-level semantics in CV through a multidisciplinary analysis, and categorization into distinct clusters, including commonsense, emotional, aesthetic, and inductive interpretative semantics. Secondly, it identifies and categorizes computer vision tasks associated with high-level visual sensemaking, offering insights into the diverse research areas within this domain. Lastly, it examines how abstract concepts such as values and ideologies are handled in CV, revealing challenges and opportunities in AC-based image classification. Notably, our survey of AC image classification tasks highlights persistent challenges, such as the limited efficacy of massive datasets and the importance of integrating supplementary information and mid-level features. We emphasize the growing relevance of hybrid AI systems in addressing the multifaceted nature of AC image classification tasks. Overall, this survey enhances our understanding of high-level visual reasoning in CV and lays the groundwork for future research endeavors.