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저널 : MPE(Mathematical Problems in Engineering), Vol. 2018 (2018), Article ID 5847460. 11 pages.
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논문제목 : “Deep Image Understanding Using Multilayered Contexts”
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저자 : 신동협, 김인철
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요약 : 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.