Optimization on clustering method of the liquid drop fingerprint

Q. Song, M. Qiao, Shihui Zhang
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Abstract

In order to effectively reduce the time complexity of clustering algorithm, a new method based on multiple linear regression is put forward to reduce the eigenvector dimensions of the liquid drop fingerprint. After feature extraction with waveform analysis method applied on 38 kinds of liquid samples, optimization is carried out to decrease the 10 characteristic values to 8 values, which is then used in subsequent hierarchical clustering and dynamic clustering. Based on the first dynamic clustering results, comprehensive analysis is applied and dynamic clustering method is used once more. Experimental results show that the recognition ratio of the liquid drop fingerprint can be ensured, together with the reduced computational complexity and excellent clustering accuracy. Compared with hierarchical clustering method, the iterative dynamic clustering method is more effective in liquid identification, with its accuracy up to 100% among selected samples.
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液滴指纹聚类方法的优化
为了有效降低聚类算法的时间复杂度,提出了一种基于多元线性回归的液滴指纹特征向量降维方法。利用波形分析法对38种液体样本进行特征提取后,进行优化,将10个特征值减少到8个,用于后续的分层聚类和动态聚类。在第一次动态聚类结果的基础上,进行综合分析,再次采用动态聚类方法。实验结果表明,该方法在保证液滴指纹的识别率的同时,降低了计算复杂度,具有良好的聚类精度。与层次聚类方法相比,迭代动态聚类方法在液体识别中更有效,对所选样本的准确率可达100%。
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