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容与堂本《水浒传》插图叙事与“语—图”关系研究
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作者 汪一辰 《新闻研究导刊》 2017年第5期17-18,67,共3页
作为《水浒传》插图叙事的重要版本,容与堂本《李卓吾先生批评忠义水浒传》以其独特的审美意蕴和多元化的叙事策略,建构起"语—图"共谋的叙事策略,有效地推动了《水浒传》经典化的历程,对当下读图时代的"语—图"关... 作为《水浒传》插图叙事的重要版本,容与堂本《李卓吾先生批评忠义水浒传》以其独特的审美意蕴和多元化的叙事策略,建构起"语—图"共谋的叙事策略,有效地推动了《水浒传》经典化的历程,对当下读图时代的"语—图"关系研究具有一定的启发意义。 展开更多
关键词 小说插 叙事 时代 “图—文”关系
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Graph-based method for human-object interactions detection 被引量:1
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作者 XIA Li-min WU Wei 《Journal of Central South University》 SCIE EI CAS CSCD 2021年第1期205-218,共14页
Human-object interaction(HOIs)detection is a new branch of visual relationship detection,which plays an important role in the field of image understanding.Because of the complexity and diversity of image content,the d... Human-object interaction(HOIs)detection is a new branch of visual relationship detection,which plays an important role in the field of image understanding.Because of the complexity and diversity of image content,the detection of HOIs is still an onerous challenge.Unlike most of the current works for HOIs detection which only rely on the pairwise information of a human and an object,we propose a graph-based HOIs detection method that models context and global structure information.Firstly,to better utilize the relations between humans and objects,the detected humans and objects are regarded as nodes to construct a fully connected undirected graph,and the graph is pruned to obtain an HOI graph that only preserving the edges connecting human and object nodes.Then,in order to obtain more robust features of human and object nodes,two different attention-based feature extraction networks are proposed,which model global and local contexts respectively.Finally,the graph attention network is introduced to pass messages between different nodes in the HOI graph iteratively,and detect the potential HOIs.Experiments on V-COCO and HICO-DET datasets verify the effectiveness of the proposed method,and show that it is superior to many existing methods. 展开更多
关键词 human-object interactions visual relationship context information graph attention network
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