Generation of Textual Explanations in XAI: the Case of Semantic Annotation

Jean-Philippe Poli, W. Ouerdane, Régis Pierrard
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引用次数: 4

Abstract

Semantic image annotation is a field of paramount importance in which deep learning excels. However, some application domains, like security or medicine, may need an explanation of this annotation. Explainable Artificial Intelligence is an answer to this need. In this work, an explanation is a sentence in natural language that is dedicated to human users to provide them clues about the process that leads to the decision: the labels assignment to image parts. We focus on semantic image annotation with fuzzy logic that has proven to be a useful framework that captures both image segmentation imprecision and the vagueness of human spatial knowledge and vocabulary. In this paper, we present an algorithm for textual explanation generation of the semantic annotation of image regions.
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XAI中文本解释的生成:以语义标注为例
语义图像标注是深度学习最擅长的领域之一。但是,某些应用程序领域,如安全或医学,可能需要对此注释进行解释。可解释的人工智能是对这一需求的回答。在这项工作中,解释是一个自然语言的句子,专门用于人类用户,为他们提供有关导致决策过程的线索:给图像部分分配标签。基于模糊逻辑的语义图像标注已被证明是一种有效的框架,它既能捕获图像分割的不精确性,又能捕获人类空间知识和词汇的模糊性。本文提出了一种图像区域语义标注的文本解释生成算法。
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