ITE Transactions on Media Technology and Applications
Online ISSN : 2186-7364
ISSN-L : 2186-7364
Papers
[Paper] Deep Learning-based RGBA Image Compression with Masked Window-based Attention
Yoshiki InazuHideaki Kimata
著者情報
ジャーナル フリー

2025 年 13 巻 2 号 p. 200-210

詳細
抄録

RGBA image that includes an alpha channel for transparency is common in real-world applications. Traditional RGBA compression methods apply the same methods to both RGB and alpha channel, but potentially leading to suboptimal results due to their different characteristics. This paper proposes a deep neural network that introduces attention modules individually suitable for RGB signals and alpha channel. The proposed method consists of two networks, one for the RGB signal and one for the alpha channel, with an appropriate attention module applied in each. In particular, a new attention module that focuses on the unmasked regions of the alpha channel is applied. In the evaluation, the proposed method is compared with a simple deep neural network with input and output layers extended from three to four channels and classical RGBA image compression methods.

著者関連情報
© 2025 The Institute of Image Information and Television Engineers
次の記事
feedback
Top