A Framework of Formal Specification-Based Data Generation for Deep Neural Networks

Yanzhao Xia, Shaoying Liu
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引用次数: 1

Abstract

Deep Neural Networks (DNNs) have gained growing attention in many domain-specific supervised learning applications. However, the current DNNs still face two challenges. One is the difficulty of obtaining well-labeled training data for supervised learning and the other is concerned with the efficiency of training due to the lack of precise characteristics of the objects in the training process. We propose a framework of formal specification-based data generation for the training and testing of DNNs. The framework is characterized by using formal specifications to define the important and distinct features of the objects to be identified. The features are expected to serve as the foundation for generating training and testing data for DNNs. In this paper, we discuss all the activities involved in the framework and the detailed approach to writing the formal specifications. We also conduct a case study on traffic sign recognition to validate the framework.
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基于形式化规范的深度神经网络数据生成框架
深度神经网络(dnn)在许多特定领域的监督学习应用中得到了越来越多的关注。然而,目前的深度神经网络仍然面临两个挑战。一个是监督学习难以获得标记良好的训练数据,另一个是由于训练过程中缺乏精确的对象特征而导致的训练效率问题。我们提出了一个基于正式规范的数据生成框架,用于dnn的训练和测试。该框架的特点是使用正式规范来定义要识别的对象的重要和独特的特征。这些特征有望作为dnn生成训练和测试数据的基础。在本文中,我们讨论了框架中涉及的所有活动以及编写正式规范的详细方法。我们还进行了一个交通标志识别的案例研究来验证该框架。
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