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引用次数: 0

摘要

卷积神经网络(CNN)以其从图像中提取特征而闻名。极限学习机(Extreme Learning Machine, ELM)以其快速的学习能力被广泛应用于各个研究领域。CNN-KELM克服了KELM在提取特征方面的不足,该模型在使用KELM分类之前先使用CNN对输入图像进行检测。我们改进的CKELM包括基于秩的池化策略和GPU训练。在数据集CIFAR上对我们的建议进行了实验评估,结果证明我们的池化方法比传统的池化方法性能更好。
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Going Deeper with CKELM
Convolutional Neural Networks (CNN) is known for its features extraction from images. Extreme Learning Machine (ELM), has been adopted in various researching fields for its fast learning. CNN-KELM has overcome the KELM'S shortage of extracting features as this model uses CNN to detect the input image before classifying with KELM. Our improved CKELM includes rank based pooling strategy and GPU training. We make experiments to evaluate our proposal on dataset CIFAR and result proves that our pooling methods perform better than traditional ones.
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