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Experiments of Image Classification Using Dissimilarity Spaces Built with Siamese Networks

机译:暹罗网络建立的不同空间的图像分类实验

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摘要

Traditionally, classifiers are trained to predict patterns within a feature space. The image classification system presented here trains classifiers to predict patterns within a vector space by combining the dissimilarity spaces generated by a large set of Siamese Neural Networks (SNNs). A set of centroids from the patterns in the training data sets is calculated with supervised k-means clustering. The centroids are used to generate the dissimilarity space via the Siamese networks. The vector space descriptors are extracted by projecting patterns onto the similarity spaces, and SVMs classify an image by its dissimilarity vector. The versatility of the proposed approach in image classification is demonstrated by evaluating the system on different types of images across two domains: two medical data sets and two animal audio data sets with vocalizations represented as images (spectrograms). Results show that the proposed system’s performance competes competitively against the best-performing methods in the literature, obtaining state-of-the-art performance on one of the medical data sets, and does so without ad-hoc optimization of the clustering methods on the tested data sets.
机译:传统上,培训分类器以预测特征空间内的模式。这里呈现的图像分类系统通过组合由一组暹罗神经网络(SNNS)产生的异化空间来预测矢量空间内的图案。通过监督K-Means群集计算来自训练数据集中的模式的一组质心。质心用于通过暹罗网络生成不相似的空间。通过将图案投影到相似度空间上提取矢量空间描述符,并且SVMS通过其不同传染媒介对图像进行分类。通过在两个域的不同类型图像上评估系统:两个医疗数据集和两组具有表示为图像(频谱图)的两个动物音频数据集来证明图像分类中的所提出的方法的多功能性。结果表明,拟议的系统的绩效竞争地竞争了文献中最佳性能的方法,从而在其中一个医疗数据集上获得最先进的性能,并在没有群集优化群集方法的情况下测试数据集。

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