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首页> 外文期刊>Expert systems with applications >Mix-ratio sampling: Classifying multiclass imbalanced mouse brain images using support vector machine
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Mix-ratio sampling: Classifying multiclass imbalanced mouse brain images using support vector machine

机译:混合比例采样:使用支持向量机对多类不平衡鼠标大脑图像进行分类

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摘要

Support Vector Machine (SVM) is a classifier designed to achieve optimized classification accuracy. It has been applied to numerous applications associated with images. Yet challenges remain when applying SVM on segmenting mouse brain images. This is due to the fact that each high-resolution mouse brain image is a very large data set and it is a multiclass classification problem with extremely imbalanced data size for different classes. To address these issues, a mix-ratio sampling approach for SVM is proposed which determines various over-sampling ratios for different minority classes. In addition, to improve the imaging classification accuracy, spatial information is incorporated into the classification problem. Five mouse Magnetic Resonance Microscopy (MRM) images are collected to test the accuracy of classifying 21 brain structures. The first comparison experiment demonstrates the SVM with mix-ratio sampling method relieves the imbalance problem for multiclass more effectively and efficiently than the SVM with simple over-sampling method. In the second comparison experiment, another classifier, Artificial Neural Network (ANN) is used to compare against SVM based on the same mix-ratio sampled data and the results indicate that SVM shows better classification performance than ANN. Thirdly, the cross validation is conducted to demonstrate SVM with mix-ration sampling can classify multiclass imbalanced data with high accuracy.
机译:支持向量机(SVM)是一种旨在实现最佳分类精度的分类器。它已被应用于与图像相关的众多应用。然而,在将SVM用于分割小鼠大脑图像时仍然存在挑战。这是由于以下事实:每个高分辨率的鼠标大脑图像都是一个非常大的数据集,并且这是一个多类分类问题,对于不同类别,它的数据大小极为不平衡。为了解决这些问题,提出了一种用于支持向量机的混合比率采样方法,该方法确定了不同少数群体的各种过采样率。另外,为了提高成像分类精度,将空间信息合并到分类问题中。收集了五个鼠标磁共振显微镜(MRM)图像,以测试对21个大脑结构进行分类的准确性。第一个比较实验表明,采用混合比例采样方法的SVM比采用简单过采样方法的SVM更有效,更有效地缓解了多类不平衡问题。在第二个比较实验中,基于相同的混合比率采样数据,使用另一个分类器人工神经网络(ANN)与SVM进行比较,结果表明SVM显示出比ANN更好的分类性能。第三,进行交叉验证以证明具有混合比率采样的SVM可以对多类不平衡数据进行高精度分类。

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