Class Agnostic Instance-level Descriptor for Visual Instance Search

arXiv — cs.CVTuesday, November 4, 2025 at 5:00:00 AM

Class Agnostic Instance-level Descriptor for Visual Instance Search

A new paper presents a promising approach to visual instance search, addressing the challenges posed by traditional methods that struggle with unknown object categories. By leveraging self-supervised ViT features, this research aims to enhance instance-level feature representation, which is crucial for improving image retrieval systems. This advancement could significantly impact various applications, from e-commerce to security, where accurate object identification is essential.
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