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Actively Semi-Supervised Deep Rule-based Classifier Applied to Adverse Driving Scenarios

机译:主动半监督基于深度规则的分类器应用于不良驾驶场景

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This paper presents an actively semi-supervised multi-layer neuro-fuzzy modeling method, ASSDRB, to classify different lighting conditions for driving scenes. ASSDRB is composed of a massively parallel ensemble of AnYa type 0-order fuzzy rules. It uses a recursive learning algorithm to update its structure when new data items are provided and, therefore, is able to cope with nonstationarities. Different lighting conditions for driving situations are considered in the analysis, which is used by self-driving cars as a safety mechanism. Differently from mainstream Deep Neural Networks approaches, the ASSDRB is able to learn from unseen data. Experiments on different lighting conditions for driving scenes, demonstrated that the deep neuro-fuzzy modeling is an efficient framework for these challenging classification tasks. Classification accuracy is higher than those produced by alternative machine learning methods. The number of algebraic calculations for the present method are significantly smaller and, therefore, the method is significantly faster than common Deep Neural Networks approaches. Moreover, DRB produced transparent AnYa fuzzy rules, which are human interpretable.
机译:本文提出了一种主动半监督的多层神经模糊建模方法ASSDRB,以对驾驶场景的不同照明条件进行分类。 ASSDRB由AnYa类型0阶模糊规则的大规模并行集合组成。当提供新的数据项时,它使用递归学习算法来更新其结构,因此能够应付不稳定的情况。分析中考虑了不同的驾驶条件照明条件,自动驾驶汽车将其用作安全机制。与主流的深度神经网络方法不同,ASSSDB能够从看不见的数据中学习。在驾驶场景的不同光照条件下进行的实验表明,深层神经模糊建模是完成这些具有挑战性的分类任务的有效框架。分类准确度高于其他机器学习方法产生的分类准确度。本方法的代数计算数量明显较少,因此,该方法比普通的深度神经网络方法快得多。而且,DRB生成了透明的AnYa模糊规则,这些规则可以由人类解释。

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