基于LSTM神经网络的二维空间移动主体密度估计

Marsela Polic, Ziad Salem, Karlo Griparic, S. Bogdan, T. Schmickl
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引用次数: 3

摘要

作为ASSISIbf项目的一部分,以形成一个动物和机器人的集体自适应生物混合社会为最终目标,设计并训练了一个基于LSTM架构的人工神经网络,用于蜜蜂密度估计。在实验中,蜜蜂被放置在一个覆盖着蜡的塑料竞技场中,在那里它们与专门为这个项目设计的专门的静态机器人单元casu相互作用并适应。为了与蜜蜂互动,casu需要具备以下能力:1)产生和感知刺激,即与蜜蜂行为相关的环境线索;2)感知蜜蜂的存在。第二个要求通过安装在CASU上部的6个接近传感器来实现。本文提出了一种基于LSTM神经网络的二维空间(实验场地)蜜蜂(移动主体)密度估计方法。与之前在该领域所做的工作相比,实验显示在更大的输出范围内估计放置在竞技场的蜂群的大小方面取得了令人满意的结果。测试了两种不同的方法:回归和分类,分类产生更高的准确性。
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Estimation of moving agents density in 2D space based on LSTM neural network
As a part of ASSISIbf project, with a final goal of forming a collective adaptive bio-hybrid society of animals and robots, an artificial neural network based on LSTM architecture was designed and trained for bee density estimation. During experiments, the bees are placed inside a plastic arena covered with wax, where they interact with and adapt to specialized static robotic units, CASUs, designed specially for this project. In order to interact with honeybees, the CASUs require the capability i) to produce and perceive the stimuli, i.e., environmental cues, that are relevant to honeybee behaviour, and ii) to sense the honeybees presence. The second requirement is implemented through 6 proximity sensors mounted on the upper part of CASU. In this paper we present estimation of honeybees (moving agents) density in 2D space (experimental arena) that is based on LSTM neural network. When compared to previous work done in this field, experiments demonstrate satisfactory results in estimating sizes of bee groups placed in the arena within a larger scope of outputs. Two different approaches were tested: regression and classification, with classification yielding higher accuracy.
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