首页> 外文期刊>Journal of integrative neuroscience. >Bio-inspired model of visual information encoding for localization: from the retina to the lateral geniculate nucleus.
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Bio-inspired model of visual information encoding for localization: from the retina to the lateral geniculate nucleus.

机译:视觉信息的生物启发模型,用于编码本地化:从视网膜到外侧膝状核。

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In this study, a bio-inspired approach for extracting efficient features prior to the recognition of scenes is proposed. It is highly inspired from the model of the mammals visual system. The retina contains many levels of neurons (bipolar, amacrine, horizontal and ganglion cells) accurately organized from cones and rods to the optic nerve up till the lateral geniculate nucleus (LGN) which is the main thalamic relay for inputs to the visual cortex. This structure probably eases other brain areas tasks in preprocessing the visual information. This paper is focusing on the study of these specific structures, relying on a bottom up approach to propose a comprehensive mathematical model of the low level image processing performed within the eye. The presented system takes into account the foveolar structure of the retina to produce a low-resolution representation of observed images by decomposing them into a local summation of elementary gaussian color histograms. This representation corresponds to the LGNbiological organization. It has been thought that due to short timings, some very quick localization tasks involving particularly fast information processing pathways cannot be provided by the classical ones passing through higher level cortical areas. This work proposes a model of retinal coding and LGN-visual representation that we show provides reliable and sufficient early features for scenes recognition and localization. Experiments on real scenes using the developed model are presented showing the efficiency of the approach on localization.
机译:在这项研究中,提出了一种生物启发的方法,用于在识别场景之前提取有效特征。它受到哺乳动物视觉系统模型的极大启发。视网膜包含许多水平的神经元(双极,无长突,水平和神经节细胞),从视锥细胞和视杆到视神经,一直到外侧膝状核(LGN)准确地组织起来,该外侧膝状核是丘脑的视神经皮层输入的主要继电器。这种结构可能减轻了预处理视觉信息时其他大脑区域的任务。本文着重于对这些特定结构的研究,依靠自下而上的方法来提出对眼睛内部进行的低级图像处理的综合数学模型。提出的系统考虑到视网膜的叶状结构,以通过将其分解为基本高斯颜色直方图的局部求和来生成观察图像的低分辨率表示。该表示对应于LGNbiological组织。人们认为,由于时间短,一些经过特别快的信息处理路径的非常快速的定位任务无法通过经过较高皮质区域的经典路径来提供。这项工作提出了视网膜编码和LGN视觉表示的模型,我们展示了该模型为场景识别和定位提供了可靠且足够的早期特征。提出了使用开发的模型在真实场景上进行的实验,展示了该方法在本地化方面的效率。

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