Material Recognition from Local Appearance in Global Context
Gabriel Schwartz, Ko Nishino

TL;DR
This paper presents a novel approach for dense material recognition that leverages local appearance and global contextual cues, achieving state-of-the-art accuracy with less training data.
Contribution
It introduces a fully-convolutional network that recognizes materials from local appearance and integrates object and scene context from separate CNNs, avoiding extensive data requirements.
Findings
Achieves state-of-the-art accuracy on a diverse material database.
Effectively leverages global context for improved dense material recognition.
Requires less training data than previous methods.
Abstract
Recognition of materials has proven to be a challenging problem due to the wide variation in appearance within and between categories. Global image context, such as where the material is or what object it makes up, can be crucial to recognizing the material. Existing methods, however, operate on an implicit fusion of materials and context by using large receptive fields as input (i.e., large image patches). Many recent material recognition methods treat materials as yet another set of labels like objects. Materials are, however, fundamentally different from objects as they have no inherent shape or defined spatial extent. Approaches that ignore this can only take advantage of limited implicit context as it appears during training. We instead show that recognizing materials purely from their local appearance and integrating separately recognized global contextual cues including objects…
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Taxonomy
TopicsAdvanced Neural Network Applications · Advanced Image and Video Retrieval Techniques · Industrial Vision Systems and Defect Detection
