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Exploring the Effects of Class-Specific Augmentation and Class Coalescence on Deep Neural Network Performance Using a Novel Road Feature Dataset

机译:用新的道路特征数据集探索特定于特定的增强和课堂合并对深度神经网络性能的影响

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The identification of nodal road network features in remote sensing imagery is an important object detection task due to its versatility of application. A successful capability enables urban sprawl tracking, automatic or semi-automated map accuracy validation and updating, and macro-scale infrastructure damage evaluation and tracking just to name a few. We have curated a custom, novel dataset that includes nodal road network features such as bridges, cul-de-sacs, freeway exchanges and exits, freeway overpasses, intersections, and traffic circles. From this curated data we have evaluated the use of deep machine learning for object recognition across two variations in this image dataset. These variations are expanded versus semantically coalesced classes. We have evaluated the performance of two deep convolutional neural networks, ResNet50 and Xception, to detect these features across these variations of the image datasets. We have also explored the use of class-specific data augmentation to improve the performance of the models trained for nodal road network feature detection. Cross-validation performance of the models evaluated on four variations of this nodal road network feature dataset range from 0.81 to 0.96 (F1 scores). Coalescing highly specific, semantically challenging classes into more semantically generalized classes has a significant impact on the accuracy of the models. Our analysis provides insight into if and how these techniques can improve the performance of machine learning models, facilitating application to broad area imagery analysis in numerous application domains.
机译:遥感图像中节点道路网络特征的识别是由于其应用程序的多功能性,这是一个重要的对象检测任务。成功的能力使城市蔓延跟踪,自动或半自动地图精度验证和更新,以及宏观级基础设施损坏评估和跟踪只是为了命名几个。我们已经策划了一个定制的新型数据集,包括桥梁,cul-de-sacs,高速公路交流和出口,高速公路立交桥,交叉路口和交通圈等节点道路网络功能。根据这种策划数据,我们已经评估了在此图像数据集中的两个变体中使用深度机器学习进行对象识别。这些变化是膨胀与语义结合的课程。我们已经评估了两个深度卷积神经网络,ResET50和七旋转的性能,以检测图像数据集的这些变体的这些特征。我们还探讨了使用类特定的数据增强,以提高用于节点路网络特征检测的模型的性能。在这个节点路网特征数据集的四个变体中评估的模型的交叉验证性能范围为0.81至0.96(F1分数)。将高度具体的语义挑战课程合并为更多的语义广义课程对模型的准确性产生了重大影响。我们的分析提供了洞察,即如何以及如何如何提高机器学习模型的性能,促进应用于许多应用领域的广泛区域图像分析。

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