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A self-organizing context-based approach to the tracking of multiple robot trajectories

机译:基于自组织上下文的多机器人轨迹跟踪方法

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摘要

We have combined competitive and Hebbian learning in a neural network designed to learn and recall complex spatiotemporal sequences. In such sequences, a particular item may occur more than once or the sequence may share states with another sequence. Processing of repeated/shared states is a hard problem that occurs very often in the domain of robotics. The proposed model consists of two groups of synaptic weights: competitive interlayer and Hebbian intralayer connections, which are responsible for encoding respectively the spatial and temporal features of the input sequence. Three additional mechanisms allow the network to deal with shared states: context units, neurons disabled from learning, and redundancy used to encode sequence states. The network operates by determining the current and the next state of the learned sequences. The model is simulated over various sets of robot trajectories in order to evaluate its storage and retrieval abilities; its sequence sampling effects; its robustness to noise and its tolerance to fault. [References: 53]
机译:我们在一个旨在学习和回忆复杂的时空序列的神经网络中结合了竞争性学习和赫比学习。在这样的序列中,特定项目可能会出现不止一次,或者该序列可能会与另一个序列共享状态。处理重复/共享状态是一个棘手的问题,在机器人领域经常发生。所提出的模型由两组突触权重组成:竞争性层间和Hebbian层内连接,它们分别负责编码输入序列的空间和时间特征。网络还可以通过三种附加机制来处理共享状态:上下文单元,无法学习的神经元以及用于编码序列状态的冗余。网络通过确定学习序列的当前状态和下一个状态进行操作。为了评估模型的存储和检索能力,该模型在各种机器人轨迹上进行了仿真。其序列采样效果;它对噪声的鲁棒性和对故障的容忍度。 [参考:53]

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