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Bio-Inspired Ganglion Cell Models for Detecting Horizontal and Vertical Movements

机译:生物启发的神经节细胞模型,用于检测水平和垂直运动

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The retina performs the earlier stages of image processing in living beings and is composed of six different groups of cells, namely, the rods, cones, horizontal, bipolar, amacrine and ganglion cells. Each of those group of cells can be sub-divided into other types of cells that vary in shape, size, connectivity and functionality. Each cell is responsible for performing specific tasks in these early stages of biological image processing. Some of those cells are sensitive to horizontal and vertical movements. This paper proposes a multi-hierarchical spiking neural network architecture for detecting horizontal and vertical movements using a custom dataset which was generated in laboratory settings. The proposed architecture was designed to reflect the connectivity, behaviour and the number of layers found in the majority of vertebrates retinas, including humans. The architecture was trained using 2303 images and tested using 816 images. Simulation results revealed that each cell model is sensitive to vertical and horizontal movements with a detection error of 6.75 percent.
机译:视网膜在生物中执行早期的图像处理阶段,并且由六种不同的细胞组成,即棒,锥体,水平,双极,氨基和神经节细胞组成。这些细胞组中的每组可以将其分为其他类型的细胞,其形状,尺寸,连接和功能。每个细胞负责在这些生物图像处理的早期阶段进行特定任务。其中一些细胞对水平和垂直运动敏感。本文提出了一种多个分层尖峰神经网络架构,用于使用在实验室设置中生成的自定义数据集来检测水平和垂直移动。拟议的架构旨在反映大多数脊椎动物视网膜中发现的连接,行为和数量,包括人类。使用2303图像进行培训并使用816图像进行培训。仿真结果表明,每个细胞模型对垂直和水平运动敏感,检测误差为6.75%。

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