scholarly journals Gestalt descriptions for deep image understanding

Author(s):  
Markus Hörhan ◽  
Horst Eidenberger
Author(s):  
Fenglin Liu ◽  
Xuancheng Ren ◽  
Yuanxin Liu ◽  
Kai Lei ◽  
Xu Sun

Recently, attention-based encoder-decoder models have been used extensively in image captioning. Yet there is still great difficulty for the current methods to achieve deep image understanding. In this work, we argue that such understanding requires visual attention to correlated image regions and semantic attention to coherent attributes of interest. To perform effective attention, we explore image captioning from a cross-modal perspective and propose the Global-and-Local Information Exploring-and-Distilling approach that explores and distills the source information in vision and language. It globally provides the aspect vector, a spatial and relational representation of images based on caption contexts, through the extraction of salient region groupings and attribute collocations, and locally extracts the fine-grained regions and attributes in reference to the aspect vector for word selection. Our fully-attentive model achieves a CIDEr score of 129.3 in offline COCO evaluation with remarkable efficiency in terms of accuracy, speed, and parameter budget.


2018 ◽  
Vol 2018 ◽  
pp. 1-11 ◽  
Author(s):  
Donghyeop Shin ◽  
Incheol Kim

Generation of scene graphs and natural language captions from images for deep image understanding is an ongoing research problem. Scene graphs and natural language captions have a common characteristic in that they are generated by considering the objects in the images and the relationships between the objects. This study proposes a deep neural network model named the Context-based Captioning and Scene Graph Generation Network (C2SGNet), which simultaneously generates scene graphs and natural language captions from images. The proposed model generates results through communication of context information between these two tasks. For effective communication of context information, the two tasks are structured into three layers: the object detection, relationship detection, and caption generation layers. Each layer receives related context information from the lower layer. In this study, the proposed model was experimentally assessed using the Visual Genome benchmark data set. The performance improvement effect of the context information was verified through various experiments. Further, the high performance of the proposed model was confirmed through performance comparison with existing models.


1988 ◽  
Author(s):  
Kathryn B. Laskey ◽  
Marvin S. Cohen ◽  
William G. Roman ◽  
Paul K. Black ◽  
James R. Mcintyre

1991 ◽  
Author(s):  
Charles Weems ◽  
Martin Herbordt ◽  
Michael Scudder ◽  
James Burrill ◽  
Richard Lerner ◽  
...  
Keyword(s):  

2001 ◽  
Author(s):  
Takeo Kanade ◽  
Steven Shafer ◽  
Katsushi Ikeuchi

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