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A Big Bang-Big Crunch Type-2 Fuzzy Logic System for Explainable Semantic Segmentation of Trees in Satellite Images using HSV Color Space

机译:基于HSV颜色空间的卫星图像中树的可解释语义分割的Big Bang-Big Crunch Type-2模糊逻辑系统

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In recent years, new sensor technologies have increased the accessibility of high-resolution satellite images. The information in these images can help to improve activities like urban planning and growth analysis of cities. Additionally, information extracted from these images can be used for taking decisions related to infrastructure planning, e.g. identifying objects that might interfere with network assets like underground cables. To be able to justify the cost of network planning decisions a high degree of interpretability is required. Convolutional Neural Networks (CNNs) are the state of the art for segmenting these images, but like any black box model they do not offer any explanation for their output. In this paper, we present an approach on how to use a Fuzzy Logic System (FLS) for performing explainable semantic segmentation of trees in satellite images. The FLS uses the HSV (hue, saturation, value) of the pixels as inputs and was optimized by using an evolutionary algorithm called Big Bang Big Crunch. The best configuration for the Interval Type-2 FLS has an Intersection over Union metric measure of 60.6%, which is close to the results obtained from neural network, however the proposed FLS provides interpretable outputs which is highly needed for the real-world operation especially in the telecommunication domain.
机译:近年来,新的传感器技术增加了高分辨率卫星图像的可访问性。这些图像中的信息可以帮助改善诸如城市规划和城市增长分析之类的活动。另外,从这些图像中提取的信息可以用于做出与基础设施规划有关的决策,例如。识别可能会干扰地下电缆等网络资产的对象。为了能够证明网络规划决策的成本合理,需要高度的可解释性。卷积神经网络(CNN)是分割这些图像的最新技术,但是像任何黑匣子模型一样,它们不提供任何输出解释。在本文中,我们提出了一种如何使用模糊逻辑系统(FLS)对卫星图像中的树进行可解释的语义分割的方法。 FLS使用像素的HSV(色相,饱和度,值)作为输入,并使用称为Big Bang Big Crunch的进化算法进行了优化。间隔2型FLS的最佳配置的“相交相交”度量为60.6%,这与从神经网络获得的结果相近,但是拟议的FLS提供了可解释的输出,这对于实际操作尤为重要在电信领域。

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