论文标题
在VR环境中预测设计时间时尚的受欢迎程度
Design-time Fashion Popularity Forecasting in VR Environments
论文作者
论文摘要
在盈利能力和减少未售出的库存问题方面,能够预测新服装设计的普及非常重要。在这里,我们试图解决此任务,以便为虚拟现实设计师应用程序中的时装设计师提供信息的预测,这将使他们能够根据当前的交互式和沉浸式环境中的当前消费者偏好微调其创作。为了实现这一目标,我们必须应对以下核心挑战:(1)提议的方法不应阻碍创作过程,因此它必须仅依靠服装的视觉特征,(2)新服装缺乏推断其未来知名度的历史数据,并且(3)一般的时尚趋势是高度动态的。为此,我们开发了一条计算机视觉管道对时尚图像进行了微调,以便提取相关的视觉特征以及服装的类别和属性。我们提出了一个层次标签共享(HLS)管道,以自动捕获时尚类别和属性之间的层次关系。此外,我们提出了Muqar,Muqar是一种多模式的准自动回归神经网络,该网络通过结合其视觉特征和分类特征来预测新服装的普及,而自回归的神经网络正在建模服装类别的受欢迎程度和属性。拟议的HLS和MUQAR都能够超过关键基准数据集中最新的最新技术,图像分类的深层时尚以及用于新服装销售预测的Visuelle。
Being able to forecast the popularity of new garment designs is very important in an industry as fast paced as fashion, both in terms of profitability and reducing the problem of unsold inventory. Here, we attempt to address this task in order to provide informative forecasts to fashion designers within a virtual reality designer application that will allow them to fine tune their creations based on current consumer preferences within an interactive and immersive environment. To achieve this we have to deal with the following central challenges: (1) the proposed method should not hinder the creative process and thus it has to rely only on the garment's visual characteristics, (2) the new garment lacks historical data from which to extrapolate their future popularity and (3) fashion trends in general are highly dynamical. To this end, we develop a computer vision pipeline fine tuned on fashion imagery in order to extract relevant visual features along with the category and attributes of the garment. We propose a hierarchical label sharing (HLS) pipeline for automatically capturing hierarchical relations among fashion categories and attributes. Moreover, we propose MuQAR, a Multimodal Quasi-AutoRegressive neural network that forecasts the popularity of new garments by combining their visual features and categorical features while an autoregressive neural network is modelling the popularity time series of the garment's category and attributes. Both the proposed HLS and MuQAR prove capable of surpassing the current state-of-the-art in key benchmark datasets, DeepFashion for image classification and VISUELLE for new garment sales forecasting.