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Binary Segmentation Based Class Extension in Semantic Image Segmentation Using Convolutional Neural Networks

机译:基于二进制分割基于语义图像分割的类扩展,卷积神经网络

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We deal with semantic image segmentation using deep convolutional neural networks (CNNs) and propose to extent a well-trained model to capture more classes. Because ground truth is very expensive in such a pixel-wise classification task, we avoid the manual annotation of the new classes by using a binary segmentation model to support the class extension. We use soft targets (probabilities), reuse and distill knowledge from the old segmentation model, and fuse information from the binary model to regularize the training of a new model with extended classes. In the experiments, we show that our method outperforms two other methods and improves the accuracy of small object classes. Moreover, our method is robust and more capable of tolerating bad binary models.
机译:我们使用深卷积神经网络(CNNS)处理语义图像分割,并建议在培训良好训练的模型以捕获更多类。由于在这样的像素明智的分类任务中地面真理非常昂贵,因此我们通过使用二进制分段模型来支持类别扩展,避免使用新类的手动注释。我们使用软目标(概率),从旧分段模型中重用和蒸馏知识,并从二进制模型中融合信息,以规范扩展课程的新模型的培训。在实验中,我们表明我们的方法优于另外两种方法并提高了小对象类的准确性。此外,我们的方法是强大的,更能够容忍差的二进制模型。

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