人工感知的多模态贝叶斯网络

D. Faria, C. Premebida, Luis J. Manso, Eduardo Parente Ribeiro, P. Núñez
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引用次数: 0

摘要

为了使机器能够连贯地感知外部环境,可以使用来自几种不同模式的多个感官信息来源(例如摄像头、激光雷达、立体音响、RGB-D和雷达)。所有这些不同的信息源可以有效地合并,形成对环境的强大感知。本章强调了传感器信息合并的一些机制,表明根据信息的类型,可以使用不同的组合和整合策略,并且通常需要先验知识来有效地解释感官信号。感知涉及贝叶斯推理的概念是相当多的研究人员越来越普遍的立场。贝叶斯模型提供了对许多感知现象的见解,表明它们是处理现实世界不确定性和鲁棒分类(包括时间相关问题的分类)的有效方法。本章讨论了贝叶斯网络在以下领域的感官知觉应用:移动机器人、自动驾驶系统、高级驾驶员辅助系统、用于物体检测的传感器融合以及基于脑电图的心理状态分类。
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Multimodal Bayesian Network for Artificial Perception
In order to make machines perceive their external environment coherently, multiple sources of sensory information derived from several different modalities can be used (e.g. cameras, LIDAR, stereo, RGB-D, and radars). All these different sources of information can be efficiently merged to form a robust perception of the environment. Some of the mechanisms that underlie this merging of the sensor information are highlighted in this chapter, showing that depending on the type of information, different combination and integration strategies can be used and that prior knowledge are often required for interpreting the sensory signals efficiently. The notion that perception involves Bayesian inference is an increasingly popular position taken by a considerable number of researchers. Bayesian models have provided insights into many perceptual phenomena, showing that they are a valid approach to deal with real-world uncertainties and for robust classification, including classification in time-dependent problems. This chapter addresses the use of Bayesian networks applied to sensory perception in the following areas: mobile robotics, autonomous driving systems, advanced driver assistance systems, sensor fusion for object detection, and EEG-based mental states classification.
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