Multi-staged Feature-Attentive Network for Fashion Clothing Classification and Attribute Prediction

Q4 Computer Science
Majuran Shajini, A. Ramanan
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引用次数: 1

Abstract

In the visual fashion clothing analysis, many researchers are attracted with the success of deep learning concepts. In this work, we introduce a multi-staged feature-attentive network to attain clothing category classification and attribute prediction. The proposed network in this work brings out a landmark-independent structure, whereas the existing landmark-dependent structures take up a lot of manpower for landmark annotation and also suffers from inter- and intra-individual variability. Our focus on this work is intensifying feature extraction by incorporating low-level and high-level feature fusion within fashion network. We are aiming on multi-level contextual features which utilise spatial and channel-wise information to create contextual feature supervision. Further, we enclose a semi-supervised learning approach to escalate fashion clothes analysis that utilises knowledge sharing among labelled and unlabelled data. To the best of our knowledge, this is the first attempt to investigate the semi-supervised learning in fashion clothing analysis by adopting multitask architecture which simultaneously study the clothing categories as well as its attributes. We evaluated the proposed approach on large-scale DeepFashion-C dataset while unlabelled dataset obtained from six publicly available fashion datasets. Experimental results show that the proposed architectures for supervised and semi-supervised learning entailing deep convolutional neural network outperforms many state-of-the-art techniques considerably, in fashion clothing analysis.
基于多阶段特征关注网络的时尚服装分类与属性预测
在视觉时尚服装分析中,深度学习概念的成功吸引了许多研究者。在这项工作中,我们引入了一个多阶段的特征关注网络来实现服装类别分类和属性预测。本文提出的网络具有里程碑独立的结构,而现有的里程碑依赖结构需要大量的人力进行里程碑标注,并且存在个体间和个体内的可变性。我们的工作重点是通过在时尚网络中结合低级和高级特征融合来加强特征提取。我们的目标是利用空间和通道信息来创建上下文特征监督的多层次上下文特征。此外,我们附上了一种半监督学习方法来升级时尚服装分析,该方法利用标记和未标记数据之间的知识共享。据我们所知,这是第一次尝试采用同时研究服装类别及其属性的多任务架构来研究时尚服装分析中的半监督学习。我们在大规模DeepFashion-C数据集和从六个公开可用的时尚数据集获得的未标记数据集上评估了所提出的方法。实验结果表明,在时尚服装分析中,所提出的包含深度卷积神经网络的监督和半监督学习架构大大优于许多最先进的技术。
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来源期刊
Electronic Letters on Computer Vision and Image Analysis
Electronic Letters on Computer Vision and Image Analysis Computer Science-Computer Vision and Pattern Recognition
CiteScore
2.50
自引率
0.00%
发文量
19
审稿时长
12 weeks
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