Performance Evaluation of SVM in Image Segmentation

Xing Fan, Guoping Zhang, Xuezhi Xia
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引用次数: 1

Abstract

Traditional classification methods, such as neural network approaches, have suffered difficulties with generalization and producing models. Support vector machine (SVM) approach is considered a good candidate because of its high generalization performance without the need to add a priori knowledge, even when the dimension of the input space is very high. In this paper, SVM approach is proposed to segment images and we evaluate thoroughly its segmentation performance. Experimental results show that: (1) the effect of kernel function, model parameters and input vectors on the segmentation performance is significant; (2) SVM approach is suitably used as learning machine under the condition of small sample sizes; (3) SVM approach is less sensitive to noise in image segmentation.
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SVM在图像分割中的性能评价
传统的分类方法,如神经网络方法,在泛化和生成模型方面存在困难。支持向量机(SVM)方法被认为是一个很好的候选方法,因为它在不需要添加先验知识的情况下具有很高的泛化性能,即使在输入空间的维数很高的情况下也是如此。本文提出了支持向量机分割图像的方法,并对其分割性能进行了全面评价。实验结果表明:(1)核函数、模型参数和输入向量对分割性能的影响显著;(2)在小样本量条件下,SVM方法适合作为学习机;(3) SVM方法在图像分割中对噪声的敏感性较低。
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