Abstract

In the textile and apparel industry, it remains a challenging task to evaluate the fabric smoothness objectively. In existing studies, the objective fabric smoothness assessment is defined as a typical image classification problem. However, the fabric smoothness labels contain sequence information, and the problem shall be defined as an ordinal classification problem. This article presents an effective method including an image preprocessing algorithm, a compact convolutional neural network(CNN) model, and a label smoothing process. Compared with the commonly used CNN frameworks, the proposed compact CNN model is more suitable for this small-sample and low-abstraction problem. The image processing algorithm can improve the model’s illumination adaptability, and the label smoothing process can modify the model to satisfy the ordinal classification problems better. In the experiments, the method is tested on a fabric image set including 385 graded fabric specimens. Within a 10-fold cross validation, the proposed method achieves 84.00%, 95.38%, and 100% average accuracies under errors of 0 degree, 0.5 degree, and 1 degree respectively. Implementation discussions on preprocessing and label smoothing verify their effectiveness in improving model performance in assessment accuracies and illumination stability. The proposed method outperforms the state-of-the-art methods for fabric smoothness assessment and a series of widely used deep learning methods. Promisingly, the proposed method can provide novel research ideas for the image-based fabric smoothness assessment.

Highlights

  • Fabric smoothness after laundering is treated as a vital characteristic of the fabric to evaluate the tendency for the fabric to wrinkle, which quantizes the wrinkles on the fabric after being subjected to laundering procedures, has a bearing on ‘ease-of-care’ related properties in the textile and garment industry [1]

  • We propose a 2D-image-based effective method for the objective fabric smoothness assessment based on the CNN model

  • We firstly introduce the CNNs into fabric smoothness assessment field, and explored the application possibility of them

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Summary

INTRODUCTION

Fabric smoothness after laundering is treated as a vital characteristic of the fabric to evaluate the tendency for the fabric to wrinkle, which quantizes the wrinkles on the fabric after being subjected to laundering procedures, has a bearing on ‘ease-of-care’ related properties (durable press, easy-care, minimum-iron, after wash appearance, etc.) in the textile and garment industry [1]. In the opinion of this paper, the process of subjective fabric smoothness evaluation is a perceptual prediction of the tendency of wrinkles to recover based on personal experience of the human testers, according to the visual characteristics of fabric surface wrinkles Such perceptual prediction can be expressed by the abstract features extracted by CNNs. the level of abstraction of fabric smoothness is not as high as the problems such as handwritten digit recognition and face recognition. The main problem that limits the application of CNN in fabric smoothness assessment is that the models proposed in current researches require large data sets and acquire overly abstract features. With the help of this image acquisition system, the images of a fabric sample set can be captured under different light position angles as illustrated in the first row of Figure 3. The preprocessing results is illustrated in the first row of Figure 3

CNN MODEL
6) OBJECTIVE FUNCTION WITH LABEL SMOOTHING
MATERIALS
RESULT
Findings
CONCLUSION
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