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首页> 外文期刊>Soft computing: A fusion of foundations, methodologies and applications >An image representation of infrastructure based on non-classical receptive field
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An image representation of infrastructure based on non-classical receptive field

机译:基于非经典感受野的基础设施图像表示

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摘要

Biological vision systems have become highly optimized over millions of years of evolution, developing complex neural structures to represent and process stimuli. Moreover, biological systems of vision are typically far more efficient than current human-made machine vision systems. The present report describes a non-task-dependent image representation schema that simulates the early phase of a biological neural vision mechanism. We designed a neural model involving multiple types of computational units to simulate ganglion cells and their non-classical receptive fields, local feedback control circuits and receptive field dynamic self-adjustment mechanisms in the retina. We found that, beyond the pixel level, our model was able to represent images self-adaptively and rapidly. A series of statistical analyses revealed that this model not only produces compact and abstract approximations of images, but also retains their primary visual features. In addition, the improved representation was found to substantially facilitate contour detection and image segmentation. We propose that this improvement arose because ganglion cells can resize their receptive fields, enabling multi-scale analysis functionality, a neighborhood referring function and a localized synthesis function. The ganglion cell layer is the starting point of subsequent diverse visual processing. The universality of this cell type and its functional mechanisms suggests that it will be useful for designing image processing algorithms in future.
机译:生物视觉系统在数百万年的进化过程中已经高度优化,开发出复杂的神经结构来表示和处理刺激。而且,生物视觉系统通常比当前的人造机器视觉系统更有效。本报告介绍了一种非任务相关的图像表示模式,该模式模拟了生物神经视觉机制的早期阶段。我们设计了一种神经模型,其中涉及多种类型的计算单元,以模拟神经节细胞及其非经典感受野,视网膜中的局部反馈控制电路和感受野动态自我调节机制。我们发现,除了像素级别之外,我们的模型还能够自适应且快速地表示图像。一系列统计分析表明,该模型不仅可以生成紧凑紧凑的图像抽象近似,而且还保留了其主要的视觉特征。此外,发现改进的表示方式大大促进了轮廓检测和图像分割。我们提出这种改善是因为神经节细胞可以调整其感受野的大小,实现多尺度分析功能,邻域参照功能和局部合成功能。神经节细胞层是随后进行各种视觉处理的起点。这种细胞类型及其功能机制的普遍性表明,它将对将来设计图像处理算法很有用。

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