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Deep learning based automated analysis of archaeo-geophysical images

机译:基于深度学习的Archae-Geophysical图像自动分析

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摘要

Thanks to recent advances in deep learning (DL) and the increasing availability of large labeled/annotated datasets and trained network models, there has been impressive progress in the automated analysis of images from different scientific domains such as medicine, microbiology, astronomy and remote sensing. The automated analysis of archaeo-geophysical data is also considered important due to the large spatial extent of areas covered by landscape surveys using multi-sensor arrays driven by motorized carts and subsequently the large volume of collected data. In this work, a convolutional neural network (CNN) is built by Python 3.6 programming language using the Deep Learning Library of Keras with Tensorflow backends, a library that implements the building blocks for CNN. The network is trained from scratch adopting U-Net architecture to accomplish an automatic analysis of the archaeo-geophysical features with emphasis on ground-penetrating radar (GPR) anomalies.
机译:由于近期深度学习(DL)的进步和大型标签/注释数据集的越来越多的网络模型,在不同科学领域的图像自动分析中存在令人印象深刻的进展,如医药,微生物学,天文学和遥感 。 由于景观调查使用由机电推车驱动的多传感器阵列覆盖的区域的大空间程度以及随后大量的收集数据,因此对Archaeo-Geophysalical数据的自动分析也很重要。 在这项工作中,卷积神经网络(CNN)由Python 3.6编程语言构建,使用带有TensoRFlow后端的Keras的深度学习库,该库实现CNN的构建块。 网络从划痕采用U-Net架构培训,以实现Archaeo-Geophysyical特征的自动分析,重点是地面穿透雷达(GPR)异常。

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