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引用次数: 1
摘要
成功训练用于图像分割的深度神经网络模型需要具有适当的基础真值注释的大型数据集。在大多数生物医学应用中,获得足够大的标记数据集来训练这样的网络是一项繁琐的任务。因此,为了解决这个问题,我们提出了一个简单的轻量级的基于神经网络的模型,该模型生成电子显微镜(EM)堆栈训练图像的神经元结构的真实掩模。其次是图像增强,以创建一个广泛的图像掩码对数据集,用于训练分割网络。所提出的分割模型受到最先进的Unet++体系结构的启发。我们将所提出的模型(无监督)的分割预测与手动地面真值掩模进行比较,以验证我们的结果和所提出模型的效率。所提出的无监督分割网络模型即使在没有适当的地面真值掩模的情况下,也可以使用较少的列车图像进行有效的训练。它以最佳时间要求(使用Google Colab Nvidia Tesla K80 GPU不到一秒)预测被测图像的高质量分割输出。
Unsupervised Ground Truth Generation for Automated Brain EM Image Segmentation
Successful training of deep neural network models for Image Segmentation requires large datasets with proper ground truth annotations. In most bio-medical applications obtaining sufficiently large labelled datasets for training such networks, is a tedious task. Hence addressing this problem, we propose a simple light-weight neural network based model that generates ground truth masks of the neuronal structures of Electron Microscopy(EM) stacks training images. It is followed by image augmentation to create an extensive dataset of image-mask pairs for training the segmentation network. The proposed segmentation model is inspired by the state-of-the-art Unet++ architecture. We compare the segmentation predicts of the proposed model (unsupervised) with the manual ground truth masks to validate our results and efficiency of the model proposed. The proposed network model for unsupervised segmentation can be trained effectively with less number of train images even without the presence of proper ground truth masks. It predicts high quality segmentation outputs for the images under test with optimal time requirement(less than a second using a Google Colab Nvidia Tesla K80 GPU).