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Spike-Based Image Processing: Can We Reproduce Biological Vision in Hardware?

机译:基于峰值的图像处理:我们可以在硬件中重现生物愿景吗?

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Over the past 15 years, we have developed software image processing systems that attempt to reproduce the sorts of spike-based processing strategies used in biological vision. The basic idea is that sophisticated visual processing can be achieved with a single wave of spikes by using the relative timing of spikes in different neurons as an efficient code. While software simulations are certainly an option, it is now becoming clear that it may well be possible to reproduce the same sorts of ideas in specific hardware. Firstly, several groups have now developed spiking retina chips in which the pixel elements send the equivalent of spikes in response to particular events such as increases or a decreases in local luminance. Importantly, such chips are fully asynchronous, allowing image processing to break free of the standard frame based approach. We have recently shown how simple neural network architectures can use the output of such dynamic spiking retinas to perform sophisticated tasks by using a biologically inspired learning rule based on Spike-Time Dependent Plasticity (STDP). Such systems can learn to detect meaningful patterns that repeat in a purely unsupervised way. For example, after just a few minutes of training, a network composed of a first layer of 60 neurons and a second layer of 10 neurons was able to form neurons that could effectively count the number of cars going by on the different lanes of a freeway. For the moment, this work has just used simulations. However, there is a real possibility that the same processing strategies could be implemented in memristor-based hardware devices. If so, it will become possible to build intelligent image processing systems capable of learning to recognize significant events without the need for conventional computational hardware.
机译:在过去的15年中,我们开发了软件图像处理系统,该系统试图再现生物视觉中使用的基于峰值的加工策略。基本思想是通过使用不同神经元中的尖峰的相对定时作为有效的代码,可以通过单个尖刺来实现复杂的视觉处理。虽然软件仿真当然是一个选项,但现在很明显,可以在特定硬件中再现相同类型的想法。首先,几个组现在已经开发了尖刺视网膜芯片,其中像素元素响应于诸如局部亮度的增加或减少的特定事件而相当于尖峰。重要的是,这种芯片是完全异步的,允许图像处理从基于标准帧的方法中断。我们最近展示了简单的神经网络架构如何使用这种动态尖峰视网膜的输出来通过使用基于Spike时间依赖性塑性(STDP)的生物学启发的学习规则来执行复杂的任务。这样的系统可以学习以纯粹无监督的方式检测有意义的模式。例如,在仅仅几分钟的训练之后,由第一层的60神经元和第二层10层组成的网络能够形成可以有效地计算在高速公路的不同车道上的汽车数量的神经元。目前,这项工作刚刚使用了模拟。然而,存在相同的处理策略可以在基于Memristor的硬件设备中实现相同的处理策略。如果是,则可以建立能够学习识别重要事件的智能图像处理系统,而无需传统的计算硬件。

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