CVLGJan 31, 2018

From BoW to CNN: Two Decades of Texture Representation for Texture Classification

arXiv:1801.10324v2358 citations
Originality Synthesis-oriented
AI Analysis

This is an incremental survey paper that synthesizes existing research for the computer vision and pattern recognition community.

This paper provides a comprehensive survey of advances in texture representation for texture classification over the last two decades, covering more than 200 publications and discussing open challenges and future directions.

Texture is a fundamental characteristic of many types of images, and texture representation is one of the essential and challenging problems in computer vision and pattern recognition which has attracted extensive research attention. Since 2000, texture representations based on Bag of Words (BoW) and on Convolutional Neural Networks (CNNs) have been extensively studied with impressive performance. Given this period of remarkable evolution, this paper aims to present a comprehensive survey of advances in texture representation over the last two decades. More than 200 major publications are cited in this survey covering different aspects of the research, which includes (i) problem description; (ii) recent advances in the broad categories of BoW-based, CNN-based and attribute-based methods; and (iii) evaluation issues, specifically benchmark datasets and state of the art results. In retrospect of what has been achieved so far, the survey discusses open challenges and directions for future research.

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