Weakly supervised Referring Expression Grounding (REG) aims to ground a particular target in an image described by a language expression while lacking the correspondence between target and expression. Two main problems exist in weakly supervised REG. First, the lack of region-level annotations introduces ambiguities between proposals and queries. Second, most previous weakly supervised REG methods ignore the discriminative location and context of the referent, causing difficulties in distinguishing the target from other same-category objects. To address the above challenges, we design an entity-enhanced adaptive reconstruction network (EARN). Specifically, EARN includes three modules: entity enhancement, adaptive grounding, and collaborative reconstruction. In entity enhancement, we calculate semantic similarity as supervision to select the candidate proposals. Adaptive grounding calculates the ranking score of candidate proposals upon subject, location and context with hierarchical attention. Collaborative reconstruction measures the ranking result from three perspectives: adaptive reconstruction, language reconstruction and attribute classification. The adaptive mechanism helps to alleviate the variance of different referring expressions. Experiments on five datasets show EARN outperforms existing state-of-the-art methods. Qualitative results demonstrate that the proposed EARN can better handle the situation where multiple objects of a particular category are situated together.
翻译:226. 为解决上述挑战,我们设计了一个实体强化的适应性重建网络(EARN),具体地说,EARN包括三个模块:实体增强、适应性地基和协作重建。在实体增强方面,我们计算的语义相似性相当于对选择候选建议书的监督。适应性地基计算根据主题、地点和背景对候选建议书进行分级的分级,并分等级分级。 调整性重建合作衡量从三个角度得出的分级结果:适应性重建、语言重建和属性分类。适应性机制有助于缓解不同称呼表达的差别。对五个数据集的实验显示,EARN优于现有状态的立地和协作重建。