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A novel morphology domain description method for visual one-class classification

机译:一种视觉一类分类的形态学域描述新方法

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摘要

For many large sample size one-class classification problems, most existing methods fail due to the requirement lengthy execution time and large memory space. To solve these problems, a novel method referred to as Morphology domain description (MDD) is proposed by employing the concepts of Mathematical Morphology. First, the sample space is divided into blocks. Then, training samples are put into these blocks in terms of the values of their features. The block which contains at least one sample is defined as the object block, while the block without any sample is defined as the background block. Next, morphological closing and opening operations are applied to these blocks. Finally, the object blocks corresponding to the morphological operation result are considered as the domain description of the target class. A series of experiments are conducted using artificial datasets and real-world datasets to evaluate the performance of MDD. Besides, a practical example regarding aeroengine gas path condition monitoring is also conducted to demonstrate the efficiency of proposed method. The results show that the MDD is an excellent method with good classification accuracy, especially less execution time.
机译:对于许多大样本一类分类问题,大多数现有方法由于需要较长的执行时间和较大的存储空间而失败。为了解决这些问题,通过采用数学形态学的概念,提出了一种称为形态学领域描述(MDD)的新颖方法。首先,将样本空间划分为多个块。然后,根据训练样本的特征值将训练样本放入这些块中。包含至少一个样本的块被定义为对象块,而没有任何样本的块被定义为背景块。接下来,对这些模块进行形态上的关闭和打开操作。最后,将与形态运算结果相对应的对象块视为目标类别的域描述。使用人工数据集和真实数据集进行了一系列实验,以评估MDD的性能。此外,还以航空发动机气路状态监测为例,论证了所提方法的有效性。结果表明,MDD是一种优良的方法,具有良好的分类精度,尤其是执行时间短。

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