In this paper, we study the problem of recognizing compositional attribute-object concepts within the zero-shot learning (ZSL) framework. We propose an episode-based cross-attention (EpiCA) network which combines merits of cross-attention mechanism and episode-based training strategy to recognize novel compositional concepts. Firstly, EpiCA bases on cross-attention to correlate concept-visual information and utilizes the gated pooling layer to build contextualized representations for both images and concepts. The updated representations are used for a more in-depth multi-modal relevance calculation for concept recognition. Secondly, a two-phase episode training strategy, especially the transductive phase, is adopted to utilize unlabeled test examples to alleviate the low-resource learning problem. Experiments on two widely-used zero-shot compositional learning (ZSCL) benchmarks have demonstrated the effectiveness of the model compared with recent approaches on both conventional and generalized ZSCL settings.
翻译:在本文中,我们研究了在零点学习(ZSL)框架内承认构成属性-对象概念的问题;我们建议建立一个基于事件跨关注(Epica)网络,将跨关注机制和基于事件的培训战略的优点结合起来,承认新的构成概念;首先,基于交叉关注的Epica基础,将概念-视觉信息联系起来,并利用门式集合层为图像和概念建立背景化的表述;更新的表述用于更深入地计算概念识别的多模式相关性;第二,采用两阶段的阶段培训战略,特别是转换阶段,利用无标签的测试范例,缓解低资源学习问题;对两个广泛使用的零点合成学习基准的实验,显示了模型的有效性,与最近在常规和通用 ZSCL 设置方面的做法相比。