首页> 外文会议>Robotics and Automation, 1996. Proceedings., 1996 IEEE International Conference on >Pattern analysis for autonomous vehicles with the region- and feature-based neural network: global self-localization and traffic sign recognition
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Pattern analysis for autonomous vehicles with the region- and feature-based neural network: global self-localization and traffic sign recognition

机译:基于区域和特征的神经网络的自动驾驶车辆模式分析:全局自定位和交通标志识别

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Autonomous vehicles require that all processes be efficient in time, complexity and data storage. In fact, an ideal system employs multifunctional models where ever possible. This paper presents the region- and feature-based neural network (RFNN) as a viable pattern analysis process engine for solving a variety of problems with a single math model. The RFNN employs receptive fields and weight sharing which compensate for noise, minor phase shifts and occlusions. The RFNN also utilizes greedy adaptive learning rates and mature feature preservation to expedite the overall training process. A novel ad hoc approach called "shocking" is used to solve the instability problem inherent to greedy adaptive learning rates. The basic RFNN "feature" is grounded in computer vision morphology in that the neural network autonomously learns subpatterns unique to various problems. This paper comprehensively describes the flexible RFNN architecture and training process and presents two problems that can be solved by the RFNN: sensor pattern-recognition and traffic sign recognition.
机译:自动驾驶汽车要求所有流程在时间,复杂性和数据存储方面都必须高效。实际上,理想的系统会尽可能使用多功能模型。本文介绍了基于区域和特征的神经网络(RFNN),它是一种可行的模式分析过程引擎,可通过单个数学模型解决各种问题。 RFNN采用接收场和权重共享,以补偿噪声,较小的相移和闭塞。 RFNN还利用贪婪的自适应学习率和成熟的特征保留来加快整个培训过程。一种称为“休克”的新颖的临时方法用于解决贪婪的自适应学习率所固有的不稳定性问题。 RFNN的基本“功能”植根于计算机视觉形态学,因为神经网络可以自主学习各种问题特有的子模式。本文全面描述了灵活的RFNN体系结构和训练过程,并提出了RFNN可以解决的两个问题:传感器模式识别和交通标志识别。

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