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Multi-channel and multi-scale mid-level image representation for scene classification

机译:用于场景分类的多通道多尺度中级图像表示

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Convolutional neural network (CNN)-based approaches have received state-of-the-art results in scene classification. Features from the output of fully connected (FC) layers express one-dimensional semantic information but lose the detailed information of objects and the spatial information of scene categories. On the contrary, deep convolutional features have been proved to be more suitable for describing an object itself and the spatial relations among objects in an image. In addition, the feature map from each layer is max-pooled within local neighborhoods, which weakens the invariance of global consistency and is unfavorable to scenes with highly complicated variation. To cope with the above issues, an orderless multi-channel mid-level image representation on pre-trained CNN features is proposed to improve the classification performance. The mid-level image representation of two channels from the FC layer and the deep convolutional layer are integrated at multi-scale levels. A sum pooling approach is also employed to aggregate multi-scale mid-level image representation to highlight the importance of the descriptors beneficial for scene classification. Extensive experiments on SUN397 and MIT 67 indoor datasets demonstrate that the proposed method achieves promising classification performance. (C) 2017 SPIE and IS&T
机译:基于卷积神经网络(CNN)的方法已在场景分类中获得了最新技术成果。全连接(FC)层输出的要素表示一维语义信息,但丢失了对象的详细信息和场景类别的空间信息。相反,事实证明,深度卷积特征更适合于描述对象本身以及图像中对象之间的空间关系。此外,来自每个图层的特征图最大程度地集中在局部邻域内,这削弱了全局一致性的不变性,并且不利于具有高度复杂变化的场景。为了解决上述问题,提出了一种基于预训练的CNN特征的无序多通道中级图像表示方法,以提高分类性能。来自FC层和深度卷积层的两个通道的中层图像表示已在多尺度级别集成。总和池方法还用于汇总多尺度中级图像表示,以突出说明有益于场景分类的描述符的重要性。在SUN397和MIT 67室内数据集上的大量实验表明,该方法具有良好的分类性能。 (C)2017 SPIE和IS&T

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