基于模糊分类器的视觉注意系统用于智能机器人车辆导航中交通标志优先级的确定

Diego Renan Bruno, F. Osório
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引用次数: 3

摘要

在本文中,我们提出使用多决策属性和模糊集来对检测到的交通标志的重要性和优先级进行分类。采用层次分析法(AHP)计算交通标志的属性权重,采用TOPSIS (Similarity of Preference Order of Ideal Solution)对交通标志进行重要性排序。主要目标是通过知识库规则集,为新的感知系统做出贡献,从而能够在语义上关联场景,并定义在自动驾驶汽车导航的特定时刻哪个交通标志更重要。具有二维和三维图像的视觉系统必须为模糊视觉注意系统提供交通标志检测和分类的先验数据,能够检测到辅助标志(锥体和紧急标志)的使用和关联。然后,将其与道路阻塞情况下(工作道路,交通事故等)的可通航区域检测联系起来,优先考虑最重要的标志,供车辆决策。结果令人非常满意,我们在二维分类任务中获得了98.9%的准确率,在单帧三维检测任务中获得了88%的准确率。
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Visual attention system based on Fuzzy Classifier to define priority of traffic signs for intelligent robotic vehicle navigation purposes
In this paper we propose the use of Multiple Decision Attributes and Fuzzy Sets so that it is possible to classify the importance and priority of the detected traffic signs. The Analytic Hierarchy Process (AHP) was applied to calculate attribute weights, the Technique for Order of Preference by Similarity to Ideal Solution (TOPSIS) to classify the traffic signs into their importance levels. The main objective is to contribute with a new system of perception and, through a knowledge base rules set, to be able to semantically relate the scene and to define which traffic sign is more important in a certain moment of navigation of the autonomous vehicle. The system of vision with 2D and 3D images must provide the a priori data of detection and classification of traffic signs for the fuzzy visual attention system, being able to detect the use of auxiliary signs (cones and emergency signs) and relates. Then, relate then to the detection of the navigable area in cases of road blocking (road at work, with a traffic accident, etc.) and give priority to the most important signs for the decision making of the vehicle. The results are promising and very satisfactory, we obtained an accuracy of 98.9% in the 2D classification task and 88% accuracy in the single frame 3D detection task.
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