Neurally-based algorithms for image processing

Mark Flynn, H. Abarbanel, Garrett T. Kenyon
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引用次数: 1

Abstract

One of the more difficult problems in image processing is segmentation. The human brain has an ability that is unmatched by any current technology for breaking down the world into distributed features and reconstructing them into distinct objects. Neurons encode information both in the number of spikes fired in a given time period, which indicates the strength with which a given local feature is present, and in the temporal code or relative timing of the spike, indicating whether the individual features are part of the same or different objects. Neurons that respond to contiguous stimuli produce synchronous oscillations, while those that are not fire independently. Thus, neural synchrony could be used as a tag for each pixel in an image indicating to which object it belongs. We have developed a simulation based on the primary visual cortex. We found that neurons that respond to the same object oscillate synchronously while those that respond to different objects fire independently.
基于神经的图像处理算法
图像分割是图像处理中比较困难的问题之一。人类的大脑有一种能力,这是目前任何技术都无法比拟的,它可以将世界分解成分布的特征,并将它们重建成不同的物体。神经元对信息进行编码,包括在给定时间段内触发的峰值数量,这表明给定局部特征存在的强度,以及脉冲的时间编码或相对时间,表明单个特征是相同还是不同物体的一部分。对连续刺激作出反应的神经元产生同步振荡,而那些不独立放电的神经元产生同步振荡。因此,神经同步可以用作图像中每个像素的标签,表明它属于哪个对象。我们开发了一个基于初级视觉皮层的模拟系统。我们发现,对同一物体作出反应的神经元同步振荡,而对不同物体作出反应的神经元则独立振荡。
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