Abstract

Abstract Miao embroidery of the southeast area of Guizhou province in China is a kind of precious intangible cultural heritage, as well as national costume handcrafts and textiles, with delicate patterns that require exquisite workmanship. There are various skills to make Miao embroidery; therefore, it is difficult to distinguish the categories of Miao embroidery if there is a lack of sufficient knowledge about it. Furthermore, the identification of Miao embroidery based on existing manual methods is relatively low and inefficient. Thus, in this work, a novel method is proposed to identify different categories of Miao embroidery by using deep convolutional neural networks (CNNs). Firstly, we established a Miao embroidery image database and manually assigned an accurate category label of Miao embroidery to each image. Then, a pre-trained deep CNN model is fine-tuned based on the established database to learning a more robust deep model to identify the types of Miao embroidery. To evaluate the performance of the proposed deep model for the application of Miao embroidery categories recognition, three traditional non-deep methods, that is, bag-of-words (BoW), Fisher vector (FV), and vector of locally aggregated descriptors (VLAD) are employed and compared in the experiment. The experimental results demonstrate that the proposed deep CNN model outperforms the compared three non-deep methods and achieved a recognition accuracy of 98.88%. To our best knowledge, this is the first one to apply CNNs on the application of Miao embroidery categories recognition. Moreover, the effectiveness of our proposed method illustrates that the CNN-based approach might be a promising strategy for the discrimination and identification of different other embroidery and national costume patterns.

Highlights

  • Miao is one of the most populous minority in China, distributed over different regions of Guizhou Province

  • To verify the advantages of the fine-tuned convolutional neural networks (CNNs) for the classification of Miao embroidery, we compare the classification algorithm based on CNN with the algorithm based on BoW, Fisher vector (FV), and vector of locally aggregated descriptors (VLAD)

  • To verify the classification performance, we compare the result of the proposed CNN with BoW, FV, and VLAD using image features dimension 1,000

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Summary

Introduction

Miao is one of the most populous minority in China, distributed over different regions of Guizhou Province. In the Guizhou province, the southeast area has the most Miao nationalities, and here, the most exquisite and abundant embroideries can be found [2]. A research of Miao embroidery in the southeast Guizhou will be represented. Miao embroidery in the southeast area is a kind of precious intangible cultural heritage [3], an important part of Chinese-minority costume culture, and a national costume handicrafts and textiles. As shown in Fig., the embroideries usually consist of decorations on different parts of clothing such as neckline, shoulders, and sleeves (Fig.). All “Miao embroidery” in this paper refer to the Miao embroidery in the southeast Guizhou of China

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