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有晶状体眼后房型人工晶状体植入术治疗二次LASIK手术后屈光回退一例 被引量:1
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作者 应良 胡平平 +3 位作者 巩立雪 刘臻 高翠英 胡隆基 《中华眼视光学与视觉科学杂志》 CAS CSCD 2019年第12期952-954,共3页
患者,男,48岁,因"二次准分子激光原位角膜磨镶术(LASIK)术后6年,视力下降3年"来我院就诊。患者首次于2010年5月18日就诊于青岛华厦眼科医院,因高度近视预行LASIK手术。术前检查:右眼视力0.06,左眼0.15;右眼眼压20 mmHg(1 mmHg... 患者,男,48岁,因"二次准分子激光原位角膜磨镶术(LASIK)术后6年,视力下降3年"来我院就诊。患者首次于2010年5月18日就诊于青岛华厦眼科医院,因高度近视预行LASIK手术。术前检查:右眼视力0.06,左眼0.15;右眼眼压20 mmHg(1 mmHg=0.133 kPa),左眼21 mmHg;右眼散瞳验光-14.00-1.50×175=0.8,左眼-6.00-0.50×170=1.2;右眼角膜曲率43.25/44.50×80,左眼43.75/43.75×90;右眼眼轴长度30.76 mm,左眼26.58 mm;右眼角膜厚度575μm,左眼577μm。患者术后1 d复诊,右眼视力0.8,左眼1.2。 展开更多
关键词 右眼视力 LASIK手术 眼科医院 散瞳验光 眼轴长度 角膜曲率 高度近视 术前检查
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Erroneous pixel prediction for semantic image segmentation
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作者 lixue gong Yiqun Zhang +2 位作者 Yunke Zhang Yin Yang Weiwei Xu 《Computational Visual Media》 SCIE EI CSCD 2022年第1期165-175,共11页
We consider semantic image segmentation.Our method is inspired by Bayesian deep learning which improves image segmentation accuracy by modeling the uncertainty of the network output.In contrast to uncertainty,our meth... We consider semantic image segmentation.Our method is inspired by Bayesian deep learning which improves image segmentation accuracy by modeling the uncertainty of the network output.In contrast to uncertainty,our method directly learns to predict the erroneous pixels of a segmentation network,which is modeled as a binary classification problem.It can speed up training comparing to the Monte Carlo integration often used in Bayesian deep learning.It also allows us to train a branch to correct the labels of erroneous pixels.Our method consists of three stages:(i)predict pixel-wise error probability of the initial result,(ii)redetermine new labels for pixels with high error probability,and(iii)fuse the initial result and the redetermined result with respect to the error probability.We formulate the error-pixel prediction problem as a classification task and employ an error-prediction branch in the network to predict pixel-wise error probabilities.We also introduce a detail branch to focus the training process on the erroneous pixels.We have experimentally validated our method on the Cityscapes and ADE20K datasets.Our model can be easily added to various advanced segmentation networks to improve their performance.Taking DeepLabv3+as an example,our network can achieve 82.88%of mloU on Cityscapes testing dataset and 45.73%on ADE20K validation dataset,improving corresponding DeepLabv3+results by 0.74%and 0.13%respectively. 展开更多
关键词 erroneous pixel prediction image segmentation deep learning
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