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System and method for expanding and training convolutional neural networks for large size input images

机译:用于扩展和培训大型输入图像的卷积神经网络的系统和方法

摘要

According to exemplary methods of training a convolutional neural network, input images are received into a computerized device having an image processor. The image processor evaluates the input images using first convolutional layers. The number of first convolutional layers is based on a first size for the input images. Each layer of the first convolutional layers receives layer input signals comprising features of the input images and generates layer output signals that include signals from the input images and ones of the layer output signals from previous layers within the first convolutional layers. Responsive to an input image being a second size larger than the first size, additional convolutional layers are added to the convolutional neural network. The number of additional convolutional layers is based on the second size in relation to the first size. The additional convolutional layers are initialized using weights from the first convolutional layers. Feature maps comprising the layer output signals are created.
机译:根据训练卷积神经网络的示例性方法,将输入图像接收到具有图像处理器的计算机化设备中。图像处理器使用第一卷积层评估输入图像。第一卷积层的数量基于输入图像的第一尺寸。第一卷积层的每层接收包括输入图像的特征的层输入信号,并生成包括来自第一卷积层内的从输入图像的信号的层输出信号,包括来自先前层的层输出信号。响应于输入图像的第二尺寸大于第一尺寸,将附加的卷积层添加到卷积神经网络中。附加卷积层的数量基于与第一尺寸相关的第二尺寸。使用来自第一卷积层的重量初始化附加的卷积层。创建包括图层输出信号的特征映射。

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