Design sharing sites provide UI designers with a platform to share their works and also an opportunity to get inspiration from others' designs. To facilitate management and search of millions of UI design images, many design sharing sites adopt collaborative tagging systems by distributing the work of categorization to the community. However, designers often do not know how to properly tag one design image with compact textual description, resulting in unclear, incomplete, and inconsistent tags for uploaded examples which impede retrieval, according to our empirical study and interview with four professional designers. Based on a deep neural network, we introduce a novel approach for encoding both the visual and textual information to recover the missing tags for existing UI examples so that they can be more easily found by text queries. We achieve 82.72% accuracy in the tag prediction. Through a simulation test of 5 queries, our system on average returns hundreds more results than the default Dribbble search, leading to better relatedness, diversity and satisfaction.
翻译:设计共享网站为用户界面设计师提供了一个分享作品的平台,也提供了一个从他人设计中得到灵感的机会。为了便利管理和搜索数百万用户界面设计图像,许多设计共享网站采用了合作标签系统,将分类工作分配给社区。然而,根据我们的实证研究和与四名专业设计师的访谈,设计共享网站往往不知道如何正确标记一个带有缩略语描述的设计图像,导致上载实例的标签不明确、不完整和不一致,从而妨碍检索。基于深层神经网络,我们采用了一种新颖的方法,将视觉和文字信息编码,以恢复现有用户界面实例缺失的标签,以便更容易通过文字查询找到这些标签。我们在标签预测中实现了82.72%的准确度。通过对5个查询进行模拟测试,我们的系统平均返回数百个比默认的Dribbbble搜索结果多出数百个,导致更好的关联性、多样性和满意度。