A framework of extracting multi-scale features using multiple convolutional neural networks

Kuan-Chuan Peng, Tsuhan Chen
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引用次数: 31

Abstract

Most works related to convolutional neural networks (CNN) use the traditional CNN framework which extracts features in only one scale. We propose multi-scale convolutional neural networks (MSCNN) which can not only extract multi-scale features but also solve the issues of the previous methods which use CNN to extract multi-scale features. With the assumption of label-inheritable (LI) property, we also propose a method to generate exponentially more training examples for MSCNN from the given training set. Our experimental results show that MSCNN outperforms both the state-of-the-art methods and the traditional CNN framework on artist, artistic style, and architectural style classification, supporting that MSCNN outperforms the traditional CNN framework on the tasks which at least partially satisfy LI property.
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基于多卷积神经网络的多尺度特征提取框架
与卷积神经网络(CNN)相关的大部分工作都使用传统的CNN框架,仅在一个尺度上提取特征。本文提出的多尺度卷积神经网络(MSCNN)不仅可以提取多尺度特征,而且解决了以往使用CNN提取多尺度特征方法的问题。在假设标签可继承(LI)属性的前提下,提出了一种从给定的训练集生成指数级多的MSCNN训练样例的方法。我们的实验结果表明,MSCNN在艺术家、艺术风格和建筑风格分类上优于最先进的方法和传统的CNN框架,支持MSCNN在至少部分满足LI属性的任务上优于传统的CNN框架。
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