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Semantic referee: A neural-symbolic framework for enhancing geospatial semantic segmentation

机译:语义裁判:一种用于增强地理空间语义分割的神经象征性框架

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摘要

Understanding why machine learning algorithms may fail is usually the task of the human expert that uses domain knowledge and contextual information to discover systematic shortcomings in either the data or the algorithm. In this paper, we propose a semantic referee, which is able to extract qualitative features of the errors emerging from deep machine learning frameworks and suggest corrections. The semantic referee relies on ontological reasoning about spatial knowledge in order to characterize errors in terms of their spatial relations with the environment. Using semantics, the reasoner interacts with the learning algorithm as a supervisor. In this paper, the proposed method of the interaction between a neural network classifier and a semantic referee shows how to improve the performance of semantic segmentation for satellite imagery data.
机译:了解为什么机器学习算法可能失败通常是人类专家的任务,它使用域知识和上下文信息来发现数据或算法中的系统缺点。 在本文中,我们提出了一个语义裁判,能够提取从深机器学习框架中出现的错误的定性特征,并建议更正。 语义裁判依赖于空间知识的本体理论,以便在与环境的空间关系方面表征错误。 使用语义,推理员与学习算法作为主管交互。 在本文中,神经网络分类器与语义裁判之间的相互作用的提出方法显示了如何提高卫星图像数据的语义分段性能。

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