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Sketching Image Gist: Human-Mimetic Hierarchical Scene Graph Generation

机译:素描图像要点:仿人层次场景图生成

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Scene graph aims to faithfully reveal humans' perception of image content. When humans analyze a scene, they usually prefer to describe image gist first, namely major objects and key relations in a scene graph. This humans' inherent perceptive habit implies that there exists a hierarchical structure about humans' preference during the scene parsing procedure. Therefore, we argue that a desirable scene graph should be also hierarchically constructed, and introduce a new scheme for modeling scene graph. Concretely, a scene is represented by a human-mimetic Hierarchical Entity Tree (HET) consisting of a series of image regions. To generate a scene graph based on HET, we parse HET with a Hybrid Long Short-Term Memory (Hybrid-LSTM) which specifically encodes hierarchy and siblings context to capture the structured information embedded in HET. To further prioritize key relations in the scene graph, we devise a Relation Ranking Module (RRM) to dynamically adjust their rankings by learning to capture humans' subjective perceptive habits from objective entity saliency and size. Experiments indicate that our method not only achieves state-of-the-art performances for scene graph generation, but also is expert in mining image-specific relations which play a great role in serving downstream tasks.
机译:场景图旨在忠实地揭示人类对图像内容的感知。在分析场景时,人们通常更倾向于先描述图像要点,即场景图中的主要对象和关键关系。这种人类固有的感知习惯意味着在场景解析过程中,人类的偏好存在一种层次结构。因此,我们认为理想的场景图也应该分层构造,并介绍了一种新的场景图建模方案。具体来说,场景由一系列图像区域组成的仿人层次实体树(HET)表示。为了生成基于HET的场景图,我们使用混合长短时记忆(Hybrid LSTM)解析HET,该混合长短时记忆专门编码层次和兄弟上下文,以捕获嵌入HET中的结构化信息。为了进一步确定场景图中关键关系的优先级,我们设计了一个关系排序模块(RRM),通过学习从客观实体的显著性和大小中捕捉人类的主观感知习惯来动态调整它们的排名。实验表明,我们的方法不仅在场景图生成方面达到了最先进的性能,而且在挖掘图像特定关系方面也非常擅长,这些关系在服务于下游任务方面起到了很大的作用。

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