Analyzing fashion attributes is essential in the fashion design process. Current fashion forecasting firms, such as WGSN utilizes information from all around the world (from fashion shows, visual merchandising, blogs, etc). They gather information by experience, by observation, by media scan, by interviews, and by exposed to new things. Such information analyzing process is called abstracting, which recognize similarities or differences across all the garments and collections. In fact, such abstraction ability is useful in many fashion careers with different purposes. Fashion forecasters abstract across design collections and across time to identify fashion change and directions; designers, product developers and buyers abstract across a group of garments and collections to develop a cohesive and visually appeal lines; sales and marketing executives abstract across product line each season to recognize selling points; fashion journalist and bloggers abstract across runway photos to recognize symbolic core concepts that can be translated into editorial features. Fashion attributes analysis for such fashion insiders requires much detailed and in-depth attributes annotation than that for consumers, and requires inference on multiple domains. In this project, we propose a data-driven approach for recognizing fashion attributes. Specifically, a modified version of Faster R-CNN model is trained on images from a large-scale localization dataset with 594 fine-grained attributes under different scenarios, for example in online stores and street snapshots. This model will then be used to detect garment items and classify clothing attributes for runway photos and fashion illustrations.
翻译:在时装设计过程中,分析时装特征至关重要。当前时装预测公司,如WGSN等时装预测公司利用世界各地的信息(时装展示、视觉商品销售、博客等)。它们通过经验、观察、媒体扫描、访谈和接触新事物收集信息。这种信息分析过程称为抽象,承认所有服装和收藏的相似或差异。事实上,这种抽象能力在许多时装职业中不同目的都有用。时装预报公司在设计收藏和跨时间间间间抽取识别时装变化和方向;设计者、产品开发者和买方在服装和收藏组群间抽取信息,以发展一致和视觉的上诉线;销售和营销执行者在产品线间抽取信息,以识别销售点;时装记者和博客在跑道上抽取摘要,以识别可转换成编辑功能的象征核心概念。对于这种时装内行者来说,需要非常详细和深入的模型说明,然后需要在多个领域进行推理。在这个项目中,我们建议从一个数据驱动的数据驱动的、产品和收藏者抽象的系列图象学方法,具体地用一个经过训练的图象学的图解,在5级的在线图象上,将一个经过精化的模型下,在图象上,用一个经过精化的缩缩缩的图像图解的模型下,将一个图象标定成的图的图象性图的图的图象标为直的图。