콜라주 기법으로 해석한 비디오 생성

Translated title of the contribution: Video-to-Video Generated by Collage Technique

Research output: Contribution to journalArticlepeer-review

Abstract

In the field of deep learning, there are many algorithms mainly after GAN in research related to generation, but in terms of generation, there are similarities and differences with art. If the generation in the engineering aspect is mainly to judge the presence or absence of a quantitative indicator or the correct answer and the incorrect answer, the creation in the artistic aspect creates a creation that interprets the world and human life by cross-validating and doubting the correct answer and incorrect answer from various perspectives. In this paper, the video generation ability of deep learning was interpreted from the perspective of collage and compared with the results made by the artist. The characteristic of the experiment is to compare and analyze how much GAN reproduces the result of the creator made with the collage technique and the difference between the creative part, and investigate the satisfaction level by making performance evaluation items for the reproducibility of GAN. In order to experiment on how much the creator's statement and purpose of expression were reproduced, a deep learning algorithm corresponding to the statement keyword was found and its similarity was compared. As a result of the experiment, GAN did not meet much expectations to express the collage technique. Nevertheless, the image association showed higher satisfaction than human ability, which is a positive discovery that GAN can show comparable ability to humans in terms of abstract creation.
Translated title of the contributionVideo-to-Video Generated by Collage Technique
Original languageKorean
Pages (from-to)39-60
Number of pages22
Journal방송공학회 논문지
Volume26
Issue number1
DOIs
StatePublished - Jan 2021

Fingerprint

Dive into the research topics of 'Video-to-Video Generated by Collage Technique'. Together they form a unique fingerprint.

Cite this