Article,

Fabric Texture Analysis Using Computer Vision Techniques

, , and .
Instrumentation and Measurement, IEEE Transactions on, 60 (1): 44-56 (January 2011)
DOI: 10.1109/TIM.2010.2069850

Abstract

This paper presents inexpensive computer vision techniques allowing to measure the texture characteristics of woven fabric, such as weave repeat and yarn counts, and the surface roughness. First, we discuss the automatic recognition of weave pattern and the accurate measurement of yarn counts by analyzing fabric sample images. We propose a surface roughness indicator FD<sub>FFT</sub>, which is the 3-D surface fractal dimension measurement calculated from the 2-D fast Fourier transform of high-resolution 3-D surface scan. The proposed weave pattern recognition method was validated by using computer-simulated woven samples and real woven fabric images. All weave patterns of the tested fabric samples were successfully recognized, and computed yarn counts were consistent with the manual counts. The rotation invariance and scale invariance of FD<sub>FFT</sub> were validated with fractal Brownian images. Moreover, to evaluate the correctness of FD<sub>FFT</sub>, we provide a method of calculating standard roughness parameters from the 3-D fabric surface. According to the test results, we demonstrated that FD<sub>FFT</sub> is a fast and reliable parameter for fabric roughness measurement based on 3-D surface data.

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