Progressive Tree-Structured Prototype Network for End-to-End Image Captioning

Pengpeng Zeng, Jinkuan Zhu, Jingkuan Song, Lianli Gao
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引用次数: 9

Abstract

Studies of image captioning are shifting towards a trend of a fully end-to-end paradigm by leveraging powerful visual pre-trained models and transformer-based generation architecture for more flexible model training and faster inference speed. State-of-the-art approaches simply extract isolated concepts or attributes to assist description generation. However, such approaches do not consider the hierarchical semantic structure in the textual domain, which leads to an unpredictable mapping between visual representations and concept words. To this end, we propose a novel Progressive Tree-Structured prototype Network (dubbed PTSN), which is the first attempt to narrow down the scope of prediction words with appropriate semantics by modeling the hierarchical textual semantics. Specifically, we design a novel embedding method called tree-structured prototype, producing a set of hierarchical representative embeddings which capture the hierarchical semantic structure in textual space. To utilize such tree-structured prototypes into visual cognition, we also propose a progressive aggregation module to exploit semantic relationships within the image and prototypes. By applying our PTSN to the end-to-end captioning framework, extensive experiments conducted on MSCOCO dataset show that our method achieves a new state-of-the-art performance with 144.2% (single model) and 146.5% (ensemble of 4 models) CIDEr scores on 'Karpathy' split and 141.4% (c5) and 143.9% (c40) CIDEr scores on the official online test server. Trained models and source code have been released at: https://github.com/NovaMind-Z/PTSN.
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端到端图像字幕的渐进式树结构原型网络
通过利用强大的视觉预训练模型和基于变压器的生成架构来实现更灵活的模型训练和更快的推理速度,图像字幕的研究正朝着完全端到端范式的趋势转变。最先进的方法只是提取孤立的概念或属性来辅助描述生成。然而,这些方法没有考虑文本域的分层语义结构,导致视觉表示和概念词之间的映射不可预测。为此,我们提出了一种新的渐进式树状结构原型网络(Progressive Tree-Structured prototype Network,简称PTSN),这是首次尝试通过对分层文本语义的建模来缩小具有适当语义的预测词的范围。具体而言,我们设计了一种新颖的树状结构原型嵌入方法,生成了一组层次代表性的嵌入,这些嵌入捕获了文本空间中的层次语义结构。为了利用这种树状结构的原型进行视觉认知,我们还提出了一个渐进聚合模块来利用图像和原型之间的语义关系。通过将我们的PTSN应用于端到端字幕框架,在MSCOCO数据集上进行的大量实验表明,我们的方法在“Karpathy”分裂上的CIDEr分数为144.2%(单个模型)和146.5%(4个模型的集合),在官方在线测试服务器上的CIDEr分数为141.4% (c5)和143.9% (c40),达到了新的最先进的性能。经过训练的模型和源代码已在https://github.com/NovaMind-Z/PTSN上发布。
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