Staining reveals the micro structure of the aspirate while creating histopathology slides. Stain variation, defined as a chromatic difference between the source and the target, is caused by varying characteristics during staining, resulting in a distribution shift and poor performance on the target. The goal of stain normalization is to match the target's chromatic distribution to that of the source. However, stain normalisation causes the underlying morphology to distort, resulting in an incorrect diagnosis. We propose FUSION, a new method for promoting stain-adaption by adjusting the model to the target in an unsupervised test-time scenario, eliminating the necessity for significant labelling at the target end. FUSION works by altering the target's batch normalization statistics and fusing them with source statistics using a weighting factor. The algorithm reduces to one of two extremes based on the weighting factor. Despite the lack of training or supervision, FUSION surpasses existing equivalent algorithms for classification and dense predictions (segmentation), as demonstrated by comprehensive experiments on two public datasets.
翻译:污点正常化的目标是将目标的染色性分布与来源的染色性分布相匹配。但是,污点正常化导致基本形态扭曲,导致不正确的诊断。我们提议FUSION, 一种促进污点测量的新方法,在未经监督的测试时间假设中将模型调整为目标,从而消除目标端的重要标签的必要性。FUSION通过改变目标的批次正常化统计,并用加权系数用源统计法将其使用。算法根据加权系数将两个极端减为一个。尽管缺乏培训或监督,FUSION还是超过了现有的分类和密度预测等值算法(分类和密度预测(分类),这在两个公共数据集的全面实验中证明了这一点。