Deep neural networks (DNNs) can learn accurately from large quantities of labeled input data, but often fail to do so when labelled data are scarce. DNNs sometimes fail to generalize ontest data sampled from different input distributions. Unsupervised Deep Domain Adaptation (DDA)techniques have been proven useful when no labels are available, and when distribution shifts are observed in the target domain (TD). In the present study, experiments are performed on seismic images of the F3 block 3D dataset from offshore Netherlands (source domain; SD) and Penobscot 3D survey data from Canada (target domain; TD). Three geological classes from SD and TD that have similar reflection patterns are considered. A deep neural network architecture named EarthAdaptNet (EAN) is proposed to semantically segment the seismic images when few classes have data scarcity, and we use a transposed residual unit to replace the traditional dilated convolution in the decoder block. The EAN achieved a pixel-level accuracy >84% and an accuracy of ~70% for the minority classes, showing improved performance compared to existing architectures. In addition, we introduce the CORAL (Correlation Alignment) method to the EAN to create an unsupervised deep domain adaptation network (EAN-DDA) for the classification of seismic reflections from F3 and Penobscot, to demonstrate possible approaches when labelled data are unavailable. Maximum class accuracy achieved was ~99% for class 2 of Penobscot, with an overall accuracy>50%. Taken together, the EAN-DDA has the potential to classify target domain seismic facies classes with high accuracy.
翻译:深神经网络(DNNS) 可以从大量标签输入数据中准确学习,但在标签数据稀缺时往往无法准确学习。 DNNS有时不能对不同输入分布的抽样数据进行普及。当没有标签时,当目标域(TD)观测到分布变化时,未经监督的深域适应(DDA)技术被证明是有用的。在本研究中,对荷兰近海的F3区块 3D 数据集的地震图像进行了实验(源域;SD) 和加拿大的Penobscot 3D 调查数据(目标域;TD) 。SD和TD的三个地质类别没有从不同输入分布分布分布的抽样数据。一个叫EarthadAdaptNet(EAN) 的深神经网络结构结构被推荐为地震部分, 当少数类别的数据缺乏数据,我们使用一个变换的残余单元来取代解码区块中的传统变异变变。 含像目标精确度 > 84%, 和来自加拿大的SDW 70% 总体反射等级数据, 显示与现有系统域域域域域域值的性变校正值。