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Learning similarity for semantic images classification

机译:学习相似度的语义图像分类

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While people compare images using semantic concepts, computers compare images using low-level visual features that sometimes have little to do with these semantics. To reduce the gap between the high-level semantics of visual objects and the low-level features extracted from them, in this paper we develop a framework of learning similarity (LS) using neural networks for semantic image classification, where a LS-based k-nearest neighbors (k-NN_L) classifier is employed to assign a label to an unknown image according to the majority of k most similar features. Experimental results on an image database show that the k-NN_L classifier outperforms the Euclidean distance-based k-NN (k-NN_E) classifier and back-propagation network classifiers (BPNC).
机译:人们使用语义概念比较图像时,计算机使用有时与这些语义无关的低级视觉功能来比较图像。为了缩小视觉对象的高级语义与从视觉对象中提取的低级特征之间的差距,在本文中,我们开发了一种使用神经网络进行语义图像分类的学习相似性(LS)框架,其中基于LS的k最近邻(k-NN_L)分类器用于根据k个最相似特征中的大多数为未知图像分配标签。在图像数据库上的实验结果表明,k-NN_L分类器的性能优于基于欧氏距离的k-NN(k-NN_E)分类器和反向传播网络分类器(BPNC)。

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