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Adaptive two-dimensional neuron grids

机译:自适应二维神经元网格

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In the last decade many early-vision tasks have been cast into the form of global optimization principles: their solution is obtained by the minimization of appropriate cost functions. The minimization procedure, which consists in most cases of a simple gradient descent, often yields a two-dimensional particle model with local exchange interaction. Our starting point is a quite general representative of such a model, a two-dimensional neuron grid, which is based on a standard neuron model. The optimization principles enter our model via a backpropagation like adaption scheme for the weights. In the case of edge detection the results we arrive at so far are similar to those obtained by the gradient descent methods. So the formalism proposed here may form an alternative basis for more sophisticated image preprocessing algorithms.
机译:在过去的十年中,许多早期愿景任务被投入到全球优化原则的形式中:它们的解决方案是通过最小化适当的成本函数来获得的。在大多数简单梯度下降的大多数情况下,最小化程序通常会产生具有本地交换交互的二维粒子模型。我们的起点是这种模型的相当一般代表,这是一种基于标准神经元模型的二维神经元网格。优化原理通过对权重的适应方案等BackPropagation来输入我们的模型。在边缘检测的情况下,我们到达到目前为止到达的结果类似于通过梯度下降方法获得的结果。因此,这里提出的形式主义可以形成更复杂的图像预处理算法的替代基础。

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