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An improved bioinspired cognitive map-building system based on episodic memory recognition

机译:一种改进的基于情节内存识别的生物透露认知地图建设系统

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Before the cognitive map is generated through the fire of the rodent hippocampal spatial cells, mammals can obtain the outside knowledge through the visual information, which comes from the eyeball to the brain. The information is encoded and transferred to the two regions of the brain based on the fact of biophysiological research, which are known as “what” loop and “where” loop. In this article, we simulate an episodic memory recognition unit consisting of the integration of two-loop information, which is applied to building the accurate bioinspired spatial cognitive map of real environments. We employ the visual bag of word algorithm based on oriented Feature from Accelerated Segment Test and rotated Binary Robust Independent Elementary Features feature to build the “what” loop and the hippocampal spatial cells cognitive model, which comes from the front-end visual information input system to build the “where” loop. At the same time, the environmental cognitive map is a topological map containing information about place cell competition firing rate, oriented Feature from Accelerated Segment Test and rotated Binary Robust Independent Elementary Features feature descriptor, similarity of image retrieval, and relative location of cognitive map nodes. The simulation experiments and physical experiments in a mobile robot platform have been done to verify the environmental adaptability and robustness of the algorithm. This proposing algorithm would provide a foundation for further research on bioinspired navigation of robots.
机译:在通过啮齿动物海马空间细胞的火灾产生认知地图之前,哺乳动物可以通过视觉信息获得外部知识,从而从眼球到大脑。根据生物生理学研究的事实,该信息被编码并转移到大脑的两个区域,这被称为“什么”环路和“其中”环路。在本文中,我们模拟了由两个环信息的集成组成的集成内存识别单元,其应用于构建真实环境的准确的生物透露空间认知图。我们使用基于加速段测试和旋转二进制强大的独立基本特征的定向特征的Word算法的Visual Bag基于加速段测试和旋转的二进制功能,构建“什么”环路和海马空间单元认知模型,这来自前端视觉信息输入系统构建“在哪里”循环。同时,环境认知地图是包含有关Place Cell竞争射击率的信息,从加速段测试和旋转二进制稳健的独立基本特征的特征描述符,图像检索的相似性以及认知地图节点的相似位置的拓扑图。已经完成了移动机器人平台中的仿真实验和物理实验以验证算法的环境适应性和鲁棒性。该提出的算法将为进一步研究机器人的生物定位导航提供基础。

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