Seed Selection for Human-Oriented Image Reconstruction via Guided Diffusion

Sep 23, 2025·
Yui Tatsumi
Yui Tatsumi
,
Ziyue Zeng
,
Hiroshi Watanabe
· 0 min read
Abstract
Conventional methods for scalable image coding for humans and machines require the transmission of additional information to achieve scalability. A recent diffusion-based approach avoids this by generating human-oriented images from machine-oriented images without extra bitrate. However, it utilizes a single random seed, which may lead to suboptimal image quality. In this paper, we propose a seed selection method that identifies the optimal seed from multiple candidates to improve image quality without increasing the bitrate. To reduce the computational cost, selection is performed based on intermediate outputs obtained from early steps of the reverse diffusion process. Experimental results demonstrate that our proposed method outperforms the baseline, which uses a single random seed without selection, across multiple evaluation metrics.
Type
Publication
In 2025 IEEE 14th Global Conference on Consumer Electronics