Recognizing Material Properties from Images
Gabriel Schwartz, Ko Nishino

TL;DR
This paper introduces a method for recognizing visual material attributes from images using weak supervision via human perception tests, improving material recognition and enabling transfer learning for unseen categories.
Contribution
The paper presents a novel approach to automatically discover and recognize visual material attributes without exhaustive manual annotation, integrating this into CNNs for enhanced material classification.
Findings
Accurately recognize material attributes from small image patches.
Automatically discover meaningful visual attributes through human perception probing.
Improve transfer learning for unseen material categories.
Abstract
Humans rely on properties of the materials that make up objects to guide our interactions with them. Grasping smooth materials, for example, requires care, and softness is an ideal property for fabric used in bedding. Even when these properties are not visual (e.g. softness is a physical property), we may still infer their presence visually. We refer to such material properties as visual material attributes. Recognizing these attributes in images can contribute valuable information for general scene understanding and material recognition. Unlike well-known object and scene attributes, visual material attributes are local properties with no fixed shape or spatial extent. We show that given a set of images annotated with known material attributes, we may accurately recognize the attributes from small local image patches. Obtaining such annotations in a consistent fashion at scale,…
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Taxonomy
TopicsIndustrial Vision Systems and Defect Detection · Advanced Neural Network Applications · Advanced Image and Video Retrieval Techniques
