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Erroneous pixel prediction for semantic image segmentation

机译:错误像素预测语义图像分割

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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 mIoU on Cityscapes testing dataset and 45.73% on ADE20K validation dataset, improving corresponding DeepLabv3+ results by 0.74% and 0.13% respectively.
机译:我们考虑语义图像分割。我们的方法受到贝叶斯深度学习的启发,通过建模网络输出的不确定性来提高图像分割精度。与不确定性相比,我们的方法直接学习以预测分割网络的错误像素,其被建模为二进制分类问题。与经常用于贝叶斯深度学习的蒙特卡罗集成,可以加快培训比较。它还允许我们训练分支以纠正错误像素的标签。我们的方法由三个阶段组成:(i)预测初始结果的像素明智的误差概率,(ii)重新确定具有高误差概率的像素的新标签,(iii)熔断初始结果和相对于初始结果和重定定义结果。误差概率。我们将误差像素预测问题作为分类任务制定,并且在网络中采用错误预测分支来预测像素明智的错误概率。我们还介绍一个详细的分支,将培训过程集中在错误像素上。我们在CityScapes和Ade20k数据集上实验验证了我们的方法。我们的模型可以很容易地添加到各种高级分段网络中以提高其性能。以DEEPLABV3 +为例,我们的网络可以在CITYCAPES测试数据集中实现82.88%的MIOU,ADE20K验证数据集45.73%,分别改善了相应的DEEPLABV3 +的结果0.74%和0.13%。

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