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Application of neural processing paradigm in visual landmark recognition and autonomous robot navigation

机译:神经处理范式在视觉地标识别和机器人自主导航中的应用

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This article addresses the issue of visual landmark recognition in autonomous robot navigation along known routes, by intuitively exploiting the functions of the human visual system and its navigational ability. A feedforward–feedbackward architecture has been developed for recognising visual landmarks in real time. It integrates the theoretical concepts from the pre-attentive and attentive stages in the human visual system, the selective attention adaptive resonance theory neural network and its derivatives, and computational approaches towards object recognition in computer vision. The architecture mimics the pre-attentive and attentive stages in the context of object recognition, embedding neural network processing paradigm into a computational template-matching approach in computer vision. The real-time landmark recognition capability is achieved by mimicking the pre-attentive stage, where it models a selective attention mechanism for optimal computational resource allocation, focusing only on the regions of interest to address the computational restrictive nature of current computer processing power. Similarly, the recognition of visual landmarks in both clean and cluttered backgrounds is implemented in the attentive stage by developing a memory feedback modulation (MFM) mechanism that enables knowledge from the memory to interact and enhance the efficiency of earlier stages in the architecture. Furthermore, it also incorporates both top-down and bottom-up facilitatory and inhibition pathways between the memory and the earlier stages to enable the architecture to recognise a 2D landmark, which is partially occluded by adjacent features in the surroundings. The results show that the architecture is able to recognise objects in cluttered backgrounds using real-images in both indoor and outdoor scenes. Furthermore, the architecture application in autonomous robot navigation has been demonstrated through a number of real-time trials in both indoor and outdoor environments.
机译:本文通过直观地利用人类视觉系统的功能及其导航能力,解决了沿已知路线的自主机器人导航中视觉地标识别的问题。已经开发了一种前馈-前馈体系结构,用于实时识别视觉界标。它整合了人类视觉系统中前注意力阶段和注意阶段的理论概念,选择性注意自适应共振理论神经网络及其派生词以及计算机视觉中对象识别的计算方法。该体系结构模仿了对象识别上下文中的前注意阶段和注意阶段,将神经网络处理范例嵌入到计算机视觉中的计算模板匹配方法中。实时地标识别功能是通过模仿预注意阶段来实现的,在该阶段中,它建模了用于优化计算资源分配的选择性注意机制,仅关注感兴趣的区域以解决当前计算机处理能力的计算限制性质。同样,通过开发内存反馈调制(MFM)机制在关注阶段实现对干净背景和凌乱背景下的视觉界标的识别,该机制使来自内存的知识能够进行交互并提高体系结构早期阶段的效率。此外,它还结合了内存和早期阶段之间的自上而下和自下而上的促进和抑制途径,以使体系结构能够识别2D界标,该界标部分被周围的相邻特征所遮挡。结果表明,该架构能够使用室内和室外场景中的真实图像识别杂乱背景中的对象。此外,通过在室内和室外环境中进行的大量实时试验,证明了该架构在自主机器人导航中的应用。

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