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An Approach for Multi Label Image Classification Using Single Label Convolutional Neural Network

机译:单标卷积神经网络多标签图像分类的方法

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Single label image classification has been promisingly demonstrated using Convolutional Neural Network (CNN). However, how this CNN will fit for multi-label images is still difficult to solve. It is mainly difficult due to lack of multi-label training image data and high complexity of latent obj ect layouts. This paper proposes an approach for classifying multi-label image by a trained single label classifier using CNN with objectness measure and selective search. We have taken two established image segmentation techniques for segmenting a multi-label image into some segmented images. Then we have forwarded the images to our trained CNN and predicted the labels of the segmented images by generalizing the result. Our single-label image classifier gives 87% accuracy on CIFAR-10 dataset. Using objectness measure with CNN gives us 51 % accuracy on a multi-label dataset and gives up to 57% accuracy using selective search both considering top-4 labels that is significantly good for a simple approach rather than a complex approach for multi-label classification using CNN.
机译:使用卷积神经网络(CNN)展示了单一标签图像分类。但是,该CNN如何适合多标签图像仍然难以解决。由于缺乏多标签训练图像数据和潜在的obj的高复杂性,主要是困难的。本文提出了一种方法,用于使用具有对象测量和选择性搜索的CNN通过CNN进行训练的单个标签分类器对多标签图像进行分类的方法。我们已经采取了两种成熟的图像分割技术,用于将多标签图像分割成一些分段图像。然后我们已将图像转发到我们训练的CNN,并通过概括结果预测分段图像的标签。我们的单个标签图像分类器在CIFAR-10数据集中提供了87 %的精度。使用CNN的Objectness测量为我们提供51 %在多标签数据集上的精度,并使用选择性搜索给出最多57 %的准确性,考虑到一个简单的方法而不是复杂的多种方法使用CNN标签分类。

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