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Colour and Texture Descriptors for Visual Recognition: A Historical Overview

Francesco Bianconi, Antonio Fernández, Fabrizio Smeraldi, Giulia Pascoletti

2021Journal of Imaging49 citationsDOIOpen Access PDF

Abstract

Colour and texture are two perceptual stimuli that determine, to a great extent, the appearance of objects, materials and scenes. The ability to process texture and colour is a fundamental skill in humans as well as in animals; therefore, reproducing such capacity in artificial ('intelligent') systems has attracted considerable research attention since the early 70s. Whereas the main approach to the problem was essentially theory-driven ('hand-crafted') up to not long ago, in recent years the focus has moved towards data-driven solutions (deep learning). In this overview we retrace the key ideas and methods that have accompanied the evolution of colour and texture analysis over the last five decades, from the 'early years' to convolutional networks. Specifically, we review geometric, differential, statistical and rank-based approaches. Advantages and disadvantages of traditional methods vs. deep learning are also critically discussed, including a perspective on which traditional methods have already been subsumed by deep learning or would be feasible to integrate in a data-driven approach.

Topics & Concepts

Computer scienceArtificial intelligenceDeep learningConvolutional neural networkTexture (cosmology)Focus (optics)PerceptionPerspective (graphical)Process (computing)Key (lock)Pattern recognition (psychology)Machine learningImage (mathematics)PsychologyPhysicsOperating systemComputer securityOpticsNeuroscienceImage Retrieval and Classification TechniquesAdvanced Image and Video Retrieval TechniquesRemote-Sensing Image Classification
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