FFENet: frequency-spatial feature enhancement network for clothing classification

Author:

Yu Feng12,Li Huiyin1,Shi Yankang1,Tang Guangyu1,Chen Zhaoxiang1,Jiang Minghua12

Affiliation:

1. School of Computer Science and Artificial Intelligence, Wuhan Textile University, Wuhan, Jiangxia District, China

2. Engineering Research Center of Hubei Province for Clothing Information, Wuhan, Jiangxia District, China

Abstract

Clothing analysis has garnered significant attention, and within this field, clothing classification plays a vital role as one of the fundamental technologies. Due to the inherent complexity of clothing scenes in real-world environments, the learning of clothing features in such complex scenes often encounters interference. Because clothing classification relies on the contour and texture information of clothing, clothing classification in real scenes may lead to poor classification results. Therefore, this paper proposes a clothing classification network based on frequency-spatial domain conversion. The proposed network combines frequency domain information with spatial information and does not compress channels. It aims to enhance the extraction of clothing features and improve the accuracy of clothing classification. In our work, (1) we combine the frequency domain information and spatial information to establish a clothing feature extraction clothing classification network without compressed feature map channels, (2) we use the frequency domain feature enhancement module to realize the preliminary extraction of clothing features, and (3) we introduce a clothing dataset in complex scenes (Clothing-8). Our network achieves a top-1 model accuracy of 93.4% on the Clothing-8 dataset and 94.62% on the Fashion-MNIST dataset. Additionally, it also achieves the best results in terms of top-3 and top-5 metrics on the DeepFashion dataset.

Funder

National Natural Science Foundation of China

Hubei key research and development program

Open project of engineering research center of Hubei province for clothing information

Wuhan applied basic frontier research project

MIIT’s AI Industry Innovation Task unveils flagship projects

Hubei science and technology project of safe production special fund

Publisher

PeerJ

Subject

General Computer Science

Reference38 articles.

1. Alzheimer’s disease diagnosis and classification using deep learning techniques;Al Shehri;PeerJ Computer Science,2022

2. Sequence SAR image classification based on bidirectional convolution-recurrent network;Bai;IEEE Transactions on Geoscience and Remote Sensing,2019

3. Speeded-up robust features (SURF);Bay;Computer Vision and Image Understanding,2008

4. Small-scale deep network for dct-based images classification;Borhanuddin,2019

5. Invariant scattering convolution networks;Bruna;IEEE Transactions on Pattern Analysis and Machine Intelligence,2013

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