Clothing Attribute Recognition with Semisupervised Learning
Document Type
Conference Proceeding
Publication Date
1-1-2021
Abstract
Clothing attribute recognition is a challenging task in the field of computer vision and multimedia. In this paper, we propose a semi-supervised method for clothing attribute prediction, which can utilize unsupervised and supervised data together. There are two parts in the proposed model, i.e., the supervised part for training clothing attribute recognition and the unsupervised part for learning the clues of the images themselves. Specifically, we introduce image transformation, i.e., projective transform, as the unsupervised part, and the MSE loss is used to regress the parameters of the transform coefficients. To explore the effectiveness of the proposed semi-supervised method, we design different scales of the unsupervised data to verify it. And the experimental results show the semi-supervised data can obtain good performance and alleviate human labor.
Publication Title
2021 IEEE International Conference on Electronic Technology, Communication and Information, ICETCI 2021
First Page Number
507
Last Page Number
511
DOI
10.1109/ICETCI53161.2021.9563361
Recommended Citation
Wang, Yilun, "Clothing Attribute Recognition with Semisupervised Learning" (2021). Kean Publications. 1038.
https://digitalcommons.kean.edu/keanpublications/1038