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Extreme learning machine with autoencoding receptive fields for image classification

机译:具有自动编码接收领域的极限学习机,用于图像分类

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摘要

Based on the theory of local receptive field based extreme learning machine (ELM-LRF) and ELM auto encoder (ELM-AE), a new network structure is proposed to take advantage of global attributes of image and output feature of each layer in the structure. This proposed network structure is called extreme learning machine with autoencoding receptive fields (ELM-ARF), which has two parts including convolution feature extraction and feature coding. In the convolution feature extraction part, local features are extracted using orthogonalized local receptive fields. The ELM-AE theory and local receptive fields are used to encode the global receptive fields, which is used to extract global features. The pooled global features and local features are combined and input into the next layer. In the feature coding part, the shallow layer feature can be input to any deep layer through the ELM-ARF connection structure. A series of encodings are performed on the combined features in each layer to achieve a nonlinear mapping relationship from input information to target categories. In order to verify the validity of the structure, ELM-ARF is tested on four classic databases: USPS, MNIST, NORB and CIFAR10. The experimental results show that ELM-ARF effectively improves image classification accuracy by encoding the combined features that contain global attributes.
机译:基于基于本地接收领域的极端学习机(ELM-LRF)和ELM自动编码器(ELM-AE)的理论,建议采用新的网络结构来利用结构中每层图像的全局属性和输出功能。这一提出的网络结构被称为极端学习机,具有自动编码接收字段(ELM-ARF),其具有两部分,包括卷积特征提取和特征编码。在卷积特征提取部分中,使用正交化的本地接收领域提取局部特征。 ELM-AE理论和本地接收字段用于编码全局接收领域,用于提取全局特征。汇总的全局功能和本地功能将组合并输入到下一图层中。在特征编码部分中,浅层特征可以通过ELM-ARF连接结构输入到任何深层。对每个层中的组合特征执行一系列编码,以实现从输入信息到目标类别的非线性映射关系。为了验证结构的有效性,ELM-ARF在四个经典数据库上进行测试:USPS,MNIST,NORB和CIFAR10。实验结果表明,ELM-ARF通过编码包含全局属性的组合特征有效提高了图像分类准确性。

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