US-GAN: Ultrasound Image-Specific Feature Decomposition for Fine Texture Transfer

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초록

Ultrasound images acquired through various measuring devices may have different styles, and each style may be specialized for diagnosing specific diseases. Accordingly, ultrasound image-to-image translation (US I2I) has become an essential research field. However, direct application of conventional I2I techniques to US I2I is difficult because it causes content deformation and has the problem of not being able to accurately translate fine textures. To solve the aforementioned problems, this paper proposes a novel feature decomposition scheme specialized for US I2I. The proposed feature decomposition explicitly separates texture and content information in latent space. Then, fine textures of the US image are effectively translated through translation of only the texture features. Moreover, I2I is carried out in a way that minimizes changes to the original content through reuse of content features. In addition to the feature decomposition scheme, we present a contrastive loss designed for content preservation. Specifically, the contrastive loss can maximize the content preservation effect because it preferentially performs query selection, which allows regions containing organ structures to be selected as queries (i.e., anchors). The proposed US image-specific learning scheme leads to qualitatively superior results, and the excellence of each method has been experimentally verified through various quantitative metrics.

키워드

Task analysisUltrasonic imagingTrainingGeneratorsFeature extractionCostsSpeckleImage analysisContrast resolutionImage textureUnpaired image-to-image tranlsationultrasound imagefeature decompositioncontrastive learning
제목
US-GAN: Ultrasound Image-Specific Feature Decomposition for Fine Texture Transfer
저자
Kim, SeonghoSong, Byung Cheol
DOI
10.1109/ACCESS.2024.3404071
발행일
2024
유형
Article
저널명
IEEE Access
12
페이지
72860 ~ 72870