Learning Semantic Concepts and Order for Image and Sentence Matching
Huang, Yan; Wu, Qi; Wang, Liang
2018-06
会议日期2018.6.18-2018.6.22
会议地点Salt Lake City
关键词Image And Sentence Matching
卷号0
期号0
DOI0
页码6163-6171
英文摘要

Image and sentence matching has made great progress recently, but it remains challenging due to the large visual semantic discrepancy. This mainly arises from that the representation of pixel-level image usually lacks of high-level semantic information as in its matched sentence. In this work, we propose a semantic-enhanced image and sentence matching model, which can improve the image representation by learning semantic concepts and then organizing them in a correct semantic order. Given an image, we first use a multi-regional multi-label CNN to predict its semantic concepts, including objects, properties, actions, etc. Then, considering that different orders of semantic concepts lead to diverse semantic meanings, we use a context-gated sentence generation scheme for semantic order learning. It simultaneously uses the image global context containing concept relations as reference and the groundtruth semantic order in the matched sentence as supervision. After obtaining the improved image representation, we learn the sentence representation with a conventional LSTM, and then jointly perform image and sentence matching and sentence generation for model learning. Extensive experiments demonstrate the effectiveness of our learned semantic concepts and order, by achieving the state-of-the-art results on two public benchmark datasets.

源文献作者Michael Brown
会议录出版者IEEE
会议录出版地USA
语种英语
URL标识查看原文
内容类型会议论文
源URL[http://ir.ia.ac.cn/handle/173211/25799]  
专题自动化研究所_智能感知与计算研究中心
作者单位中科院自动化所
推荐引用方式
GB/T 7714
Huang, Yan,Wu, Qi,Wang, Liang. Learning Semantic Concepts and Order for Image and Sentence Matching[C]. 见:. Salt Lake City. 2018.6.18-2018.6.22.
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