Reference-Guided Texture and Structure inference For Image inpainting
Taorong Liu, Liang Liao, Zheng Wang, Shin?ichi Satoh
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The usage of edge models in medical field has a huge impact on promoting the accessibility of real-time medical services in the under-developed regions. However, the handling of latency-accuracy trade-off to produce such an edge model is very challenging. Although the recent Once-For-All (ofA) network is able to directly produce a set of sub-network designs with Progressive Shrinking (PS) algorithm, it still suffers from training resource and time inefficiency downfall. in this paper, we propose a new ofA training algorithm, namely the Progressive Expansion (ProX). Empirically, we showed that the proposed paradigm can reduce training time up to 68%; while being able to produce sub-networks that have either similar or better accuracy compared to those trained with ofA-PS in ROCT (classification), BRATS and Hippocampus (3D-segmentation) public datasets.