画像データセットを用いた潜在変数の役割の検討

Translated title of the contribution: Investigating the Role of Latent Variables Using Image Datasets

岡本 紗季, 神野 健哉, Kenya JINNO

Research output: Contribution to journalArticle

Abstract

In order to analyze the role of each latent variable, we create an encoder-decoder model with skip connections and a dataset of stereoscopic images. We named the latent variables latent1-latent4, starting from the shallowest latent variable in each layer. The dataset of stereoscopic images increases the variation of the images by varying the type of solid and the length of the edges significantly. We confirm the role of latent variables by combining or not combining only certain latent variables with skip connections. As a result of the experiment, it is inferred that latent1 extracts information on the common part of the input and output, latent2 extracts information on the solid and rotation to be rotated, and latent3 and latent4 extract information to improve the quality of the generated image. The role of the latent variables did not change when the image variation is increased in this way.
Translated title of the contributionInvestigating the Role of Latent Variables Using Image Datasets
Original languageJapanese
Pages (from-to)4Xin157 - 4Xin157
JournalProceedings of the Annual Conference of JSAI
VolumeJSAI2023
DOIs
StatePublished - 2023

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