A comprehensive survey of specularity detection: state-of-the-art techniques and breakthroughs

Fengze Li, Jieming Ma*, Hai Ning Liang, Zhongbei Tian, Zhijing Wu, Tianxi Wen, Dawei Liu

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

Abstract

Specularity poses significant challenges in computer vision (CV), often leading to performance degradation in various tasks. Despite its importance, the CV field lacks a comprehensive review of specularity detection techniques. This survey addresses this gap by synthesizing diverse definitions of specularity and providing a unified framework to enhance consistency. It also presents a systematic review of traditional and deep learning-based methods for detecting specularity. Comparative experiments on a standardized dataset enable in-depth evaluation of each method, highlighting their strengths and limitations. The survey further provides structured insights and guidance for selecting appropriate methods across diverse scenarios. Through this, it identifies key areas for future research, aiming to support the development of more advanced detection models. By integrating diverse methodologies and quantitative analyzes, this survey contributes to a deeper understanding of current advancements and potential innovations in specularity detection.

Original languageEnglish
Article number218
JournalArtificial Intelligence Review
Volume58
Issue number7
DOIs
Publication statusPublished - Jul 2025

Keywords

  • Computer vision
  • Specularity
  • Specularity detection

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