Park Jooyoung, Kang Daesung, Kim Jongho, Kwok James T, Tsang Ivor W
Department of Control and Instrumentation Engineering, Korea University, Jochiwon, Chungnam, Korea.
Neural Comput. 2007 Jul;19(7):1919-38. doi: 10.1162/neco.2007.19.7.1919.
The support vector data description (SVDD) is one of the best-known one-class support vector learning methods, in which one tries the strategy of using balls defined on the feature space in order to distinguish a set of normal data from all other possible abnormal objects. The major concern of this letter is to extend the main idea of SVDD to pattern denoising. Combining the geodesic projection to the spherical decision boundary resulting from the SVDD, together with solving the preimage problem, we propose a new method for pattern denoising. We first solve SVDD for the training data and then for each noisy test pattern, obtain its denoised feature by moving its feature vector along the geodesic on the manifold to the nearest decision boundary of the SVDD ball. Finally we find the location of the denoised pattern by obtaining the pre-image of the denoised feature. The applicability of the proposed method is illustrated by a number of toy and real-world data sets.
支持向量数据描述(SVDD)是最著名的单类支持向量学习方法之一,在该方法中,人们尝试使用特征空间中定义的球的策略,以便将一组正常数据与所有其他可能的异常对象区分开来。本文的主要关注点是将SVDD的主要思想扩展到模式去噪。结合测地线投影到由SVDD产生的球形决策边界上,并解决原像问题,我们提出了一种新的模式去噪方法。我们首先对训练数据求解SVDD,然后对于每个有噪声的测试模式,通过将其特征向量沿着流形上的测地线移动到SVDD球的最近决策边界来获得其去噪特征。最后,我们通过获得去噪特征的原像来找到去噪模式的位置。通过一些玩具数据集和真实世界数据集说明了所提出方法的适用性。