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Learning Bag-of-Features Pooling for Deep Convolutional Neural Networks

机译:用于深度卷积神经网络的池池学习袋

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Convolutional Neural Networks (CNNs) are well established models capable of achieving state-of-the-art classification accuracy for various computer vision tasks. However, they are becoming increasingly larger, using millions of parameters, while they are restricted to handling images of fixed size. In this paper, a quantization-based approach, inspired from the well-known Bag-of-Features model, is proposed to overcome these limitations. The proposed approach, called Convolutional BoF (CBoF), uses RBF neurons to quantize the information extracted from the convolutional layers and it is able to natively classify images of various sizes as well as to significantly reduce the number of parameters in the network. In contrast to other global pooling operators and CNN compression techniques the proposed method utilizes a trainable pooling layer that it is end-to-end differentiable, allowing the network to be trained using regular back-propagation and to achieve greater distribution shift invariance than competitive methods. The ability of the proposed method to reduce the parameters of the network and increase the classification accuracy over other state-of-the-art techniques is demonstrated using three image datasets.
机译:卷积神经网络(CNNS)是建立的模型,能够实现各种计算机视觉任务的最先进的分类准确性。然而,使用数百万参数,它们越来越大,而它们仅限于处理固定尺寸的图像。本文提出了一种从众所周知的特征模型的基​​于量化的方法,以克服这些限制。所提出的方法称为卷积BOF(CBOF),使用RBF神经元来量化从卷积层提取的信息,并且能够本地分类各种尺寸的图像以及显着降低网络中的参数的数量。与其他全局汇集运算符和CNN压缩技术相比,所提出的方法利用可训练的汇集层,即它是端到端可微分,允许网络使用常规背部传播训练,并实现比竞争方法更大的分布换档不变性。使用三个图像数据集对所提出的方法减少网络参数和增加其他最先进技术的分类准确性的能力。

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