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Ensembles of Feedforward-Designed Convolutional Neural Networks

机译:前馈设计的卷积神经网络集成

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An ensemble method that fuses the output decision vectors of multiple feedforward-designed convolutional neural networks (FF-CNNs) to solve the image classification problem is proposed in this work. To enhance the performance of the ensemble system, it is critical to increase the diversity of FF-CNN models. To achieve this objective, we introduce diversities by adopting three strategies: 1) different parameter settings in convolutional layers, 2) flexible feature subsets fed into the Fully-connected (FC) layers, and 3) multiple image embeddings of the same input source. Furthermore, we partition input samples into easy and hard ones based on their decision confidence scores. As a result, we can develop a new ensemble system tailored to hard samples to further boost classification accuracy. Experiments are conducted on the MNIST and CIFAR-10 datasets to demonstrate the effectiveness of the ensemble method.
机译:提出了一种融合多个前馈设计的卷积神经网络(FF-CNN)的输出决策向量来解决图像分类问题的集成方法。为了增强集成系统的性能,至关重要的是增加FF-CNN模型的多样性。为了实现此目标,我们通过采用三种策略介绍多样性:1)卷积层中的不同参数设置; 2)馈入全连接(FC)层的灵活特征子集; 3)同一输入源的多个图像嵌入。此外,我们根据输入样本的决策置信度分数将其分为容易样本和困难样本。因此,我们可以开发一种针对硬样品的全新合奏系统,以进一步提高分类准确性。在MNIST和CIFAR-10数据集上进行了实验,以证明集成方法的有效性。

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